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PMC:7210464 / 1187-78512 JSONTXT

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LitCovid-PD-FMA-UBERON

Id Subject Object Predicate Lexical cue fma_id
T1 7131-7134 Body_part denotes HIV http://purl.org/sig/ont/fma/fma278683
T2 10491-10499 Body_part denotes Appendix http://purl.org/sig/ont/fma/fma14542
T3 15153-15157 Body_part denotes hand http://purl.org/sig/ont/fma/fma9712
T4 17885-17893 Body_part denotes Appendix http://purl.org/sig/ont/fma/fma14542
T5 24591-24596 Body_part denotes joint http://purl.org/sig/ont/fma/fma7490
T6 24770-24778 Body_part denotes appendix http://purl.org/sig/ont/fma/fma14542
T7 25459-25464 Body_part denotes joint http://purl.org/sig/ont/fma/fma7490
T8 26417-26425 Body_part denotes appendix http://purl.org/sig/ont/fma/fma14542
T9 26789-26797 Body_part denotes Appendix http://purl.org/sig/ont/fma/fma14542
T10 42082-42086 Body_part denotes axis http://purl.org/sig/ont/fma/fma12520
T11 43437-43441 Body_part denotes axis http://purl.org/sig/ont/fma/fma12520
T12 46506-46510 Body_part denotes back http://purl.org/sig/ont/fma/fma25056
T13 54028-54033 Body_part denotes Joint http://purl.org/sig/ont/fma/fma7490
T14 58248-58252 Body_part denotes body http://purl.org/sig/ont/fma/fma256135
T15 58492-58496 Body_part denotes body http://purl.org/sig/ont/fma/fma256135
T16 60169-60173 Body_part denotes back http://purl.org/sig/ont/fma/fma25056
T17 60812-60816 Body_part denotes body http://purl.org/sig/ont/fma/fma256135
T18 64617-64625 Body_part denotes Appendix http://purl.org/sig/ont/fma/fma14542
T19 70663-70671 Body_part denotes Appendix http://purl.org/sig/ont/fma/fma14542
T20 72396-72404 Body_part denotes Appendix http://purl.org/sig/ont/fma/fma14542
T21 73972-73976 Body_part denotes face http://purl.org/sig/ont/fma/fma24728

LitCovid-PD-UBERON

Id Subject Object Predicate Lexical cue uberon_id
T1 2247-2252 Body_part denotes scale http://purl.obolibrary.org/obo/UBERON_0002542
T2 2866-2871 Body_part denotes scale http://purl.obolibrary.org/obo/UBERON_0002542
T3 15153-15157 Body_part denotes hand http://purl.obolibrary.org/obo/UBERON_0002398
T4 73972-73976 Body_part denotes face http://purl.obolibrary.org/obo/UBERON_0001456

LitCovid-PD-MONDO

Id Subject Object Predicate Lexical cue mondo_id
T5 23-32 Disease denotes pneumonia http://purl.obolibrary.org/obo/MONDO_0005249
T6 207-216 Disease denotes pneumonia http://purl.obolibrary.org/obo/MONDO_0005249
T7 263-272 Disease denotes pneumonia http://purl.obolibrary.org/obo/MONDO_0005249
T8 329-376 Disease denotes severe acute respiratory syndrome coronavirus 2 http://purl.obolibrary.org/obo/MONDO_0100096
T9 329-362 Disease denotes severe acute respiratory syndrome http://purl.obolibrary.org/obo/MONDO_0005091
T10 381-389 Disease denotes SARS-CoV http://purl.obolibrary.org/obo/MONDO_0005091
T11 424-448 Disease denotes Coronavirus Disease 2019 http://purl.obolibrary.org/obo/MONDO_0100096
T12 450-458 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T13 688-696 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T14 1885-1893 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T15 1945-1953 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T16 2060-2068 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T17 2274-2282 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T18 2528-2536 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T19 2822-2830 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T20 2990-2998 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T21 3070-3080 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T22 3222-3232 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T23 3486-3496 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T24 3805-3813 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T25 3918-3926 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T26 4028-4036 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T27 4177-4185 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T28 4232-4240 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T29 4508-4516 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T30 4746-4754 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T31 5088-5098 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T32 5590-5600 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T33 5767-5777 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T34 6266-6276 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T35 7009-7018 Disease denotes influenza http://purl.obolibrary.org/obo/MONDO_0005812
T36 7105-7114 Disease denotes influenza http://purl.obolibrary.org/obo/MONDO_0005812
T37 7289-7298 Disease denotes influenza http://purl.obolibrary.org/obo/MONDO_0005812
T38 7395-7403 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T39 7527-7536 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T40 7593-7601 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T41 7713-7721 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T42 8925-8933 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T43 9181-9191 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T44 9435-9445 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T45 11057-11067 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T46 11117-11125 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T47 11143-11152 Disease denotes pneumonia http://purl.obolibrary.org/obo/MONDO_0005249
T48 11175-11194 Disease denotes virus infections in http://purl.obolibrary.org/obo/MONDO_0005108
T49 11946-11954 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T50 12130-12143 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T51 12175-12183 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T52 12559-12569 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T53 13754-13764 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T54 15096-15106 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T55 15215-15225 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T56 15459-15462 Disease denotes flu http://purl.obolibrary.org/obo/MONDO_0005812
T57 15725-15735 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T58 16769-16777 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T59 16863-16871 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T60 17944-17952 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T61 18048-18056 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T62 18155-18163 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T63 18384-18392 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T64 18526-18534 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T65 18605-18613 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T66 22148-22156 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T67 22700-22708 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T68 22800-22808 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T69 22887-22895 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T70 23057-23067 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T71 23535-23543 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T72 23881-23891 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T73 26140-26153 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T74 26860-26868 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T75 27170-27178 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T76 27179-27189 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T77 27484-27492 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T78 27531-27549 Disease denotes infectious disease http://purl.obolibrary.org/obo/MONDO_0005550
T79 27585-27603 Disease denotes infectious disease http://purl.obolibrary.org/obo/MONDO_0005550
T80 28840-28849 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T81 29486-29495 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T82 29854-29862 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T83 33431-33444 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T84 35017-35027 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T85 35374-35382 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T86 35777-35780 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T87 35905-35908 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T88 36352-36355 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T89 36478-36481 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T90 36948-36951 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T91 37079-37082 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T92 38314-38322 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T93 38759-38762 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T94 38892-38895 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T95 39322-39325 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T96 39455-39458 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T97 39915-39918 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T98 40055-40058 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T99 41621-41631 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T100 42949-42959 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T101 43165-43173 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T102 43524-43532 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T103 44532-44540 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T104 44960-44968 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T105 46399-46407 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T106 47055-47064 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T107 47161-47170 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T108 47251-47260 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T109 47353-47366 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T110 47464-47474 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T111 47631-47641 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T112 49157-49170 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T113 49324-49332 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T114 49945-49948 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T115 50014-50017 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T116 50089-50092 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T117 50165-50168 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T118 50230-50233 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T119 50298-50301 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T120 52682-52692 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T121 53069-53077 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T122 53113-53117 Disease denotes SARS http://purl.obolibrary.org/obo/MONDO_0005091
T123 53257-53265 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T124 53761-53769 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T125 53803-53811 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T126 53850-53868 Disease denotes infectious disease http://purl.obolibrary.org/obo/MONDO_0005550
T127 53932-53942 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T128 54299-54307 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T129 54412-54420 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T130 55140-55148 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T131 55169-55177 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T132 55215-55223 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T133 56175-56185 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T134 56449-56470 Disease denotes nosocomial infections http://purl.obolibrary.org/obo/MONDO_0043544
T135 56583-56591 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T136 56757-56765 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T137 58623-58631 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T138 62373-62381 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T139 62655-62668 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T140 63282-63291 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T141 63796-63804 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T142 65213-65216 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T143 65347-65350 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T144 65963-65966 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T145 66100-66103 Disease denotes inv http://purl.obolibrary.org/obo/MONDO_0043678
T146 67498-67507 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T147 67562-67575 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T148 67800-67810 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T149 67820-67829 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T150 68032-68040 Disease denotes SARS-CoV http://purl.obolibrary.org/obo/MONDO_0005091
T151 70419-70429 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T152 70483-70493 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T153 72120-72128 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T154 72634-72644 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T155 72899-72912 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T156 73034-73042 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T157 73537-73547 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T158 73557-73565 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T159 74077-74085 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T160 74324-74348 Disease denotes coronavirus disease 2019 http://purl.obolibrary.org/obo/MONDO_0100096
T161 74551-74564 Disease denotes infections in http://purl.obolibrary.org/obo/MONDO_0005550
T162 74713-74722 Disease denotes infection http://purl.obolibrary.org/obo/MONDO_0005550
T163 74783-74793 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T164 74839-74849 Disease denotes infectious http://purl.obolibrary.org/obo/MONDO_0005550
T165 74958-74968 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T166 75040-75048 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T167 75325-75333 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T168 75441-75449 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T169 75450-75460 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T170 76183-76193 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T171 76330-76340 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550
T172 77073-77081 Disease denotes COVID-19 http://purl.obolibrary.org/obo/MONDO_0100096
T173 77145-77155 Disease denotes infections http://purl.obolibrary.org/obo/MONDO_0005550

LitCovid-PD-CLO

Id Subject Object Predicate Lexical cue
T6 74-75 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T7 310-311 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T8 480-492 http://purl.obolibrary.org/obo/OBI_0000245 denotes Organization
T9 557-558 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T10 826-828 http://purl.obolibrary.org/obo/CLO_0001022 denotes Li
T11 826-828 http://purl.obolibrary.org/obo/CLO_0007314 denotes Li
T12 1005-1012 http://purl.obolibrary.org/obo/CLO_0009985 denotes focused
T13 1060-1065 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T14 1522-1525 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T15 1759-1760 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T16 1903-1904 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T17 2550-2551 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T18 2598-2603 http://purl.obolibrary.org/obo/UBERON_0001456 denotes faced
T19 2650-2655 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T20 3094-3095 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T21 3317-3318 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T22 3360-3361 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T23 3828-3840 http://purl.obolibrary.org/obo/OBI_0000245 denotes Organization
T24 3928-3933 http://purl.obolibrary.org/obo/CLO_0007373 denotes Lowen
T25 3983-3995 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T26 4774-4775 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T27 4871-4876 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T28 5284-5289 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T29 5814-5819 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T30 5905-5910 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T31 5961-5962 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T32 6885-6892 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes viruses
T33 7232-7236 http://purl.obolibrary.org/obo/CLO_0001185 denotes 2018
T34 7473-7474 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T35 7890-7891 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T36 7909-7910 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T37 8153-8165 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T38 8221-8226 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T39 8405-8406 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T40 8473-8478 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T41 9057-9062 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T42 9100-9101 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T43 9610-9611 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T44 10163-10172 http://purl.obolibrary.org/obo/OBI_0000245 denotes organized
T45 10428-10429 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T46 10535-10547 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T47 10925-10930 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T48 11079-11084 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T49 11088-11093 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T50 11175-11180 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T51 11475-11476 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T52 11662-11667 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T53 11788-11791 http://purl.obolibrary.org/obo/CLO_0053001 denotes 114
T54 11810-11813 http://purl.obolibrary.org/obo/CLO_0053001 denotes 114
T55 11822-11825 http://purl.obolibrary.org/obo/CLO_0009126 denotes s∑r
T56 11842-11845 http://purl.obolibrary.org/obo/CLO_0053001 denotes 114
T57 11873-11874 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T58 12412-12417 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T59 12904-12909 http://purl.obolibrary.org/obo/CLO_0050050 denotes s = 1
T60 13284-13285 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T61 13571-13574 http://purl.obolibrary.org/obo/CLO_0053001 denotes 114
T62 13620-13621 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T63 13967-13979 http://purl.obolibrary.org/obo/OBI_0000245 denotes Organization
T64 14118-14119 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T65 14149-14150 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T66 14201-14202 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T67 14484-14496 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T68 14772-14783 http://purl.obolibrary.org/obo/OBI_0000968 denotes instruments
T69 14888-14900 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T70 14987-14988 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T71 15015-15020 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T72 15289-15294 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T73 15402-15407 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T74 15448-15458 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrument
T75 15517-15526 http://purl.obolibrary.org/obo/BFO_0000030 denotes objective
T76 15643-15648 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T77 16233-16238 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T78 16467-16469 http://purl.obolibrary.org/obo/CLO_0037066 denotes tk
T79 16620-16622 http://purl.obolibrary.org/obo/CLO_0037066 denotes tk
T80 17272-17273 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T81 17527-17528 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T82 17533-17534 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T83 17846-17847 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T84 17852-17853 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T85 17894-17895 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T86 18238-18239 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T87 18465-18466 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T88 19061-19062 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T89 19108-19109 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T90 19155-19156 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T91 20290-20293 http://purl.obolibrary.org/obo/CLO_0007874 denotes m/s
T92 20606-20609 http://purl.obolibrary.org/obo/CLO_0007874 denotes m/s
T93 21162-21165 http://purl.obolibrary.org/obo/CLO_0007874 denotes m/s
T94 21473-21476 http://purl.obolibrary.org/obo/CLO_0007874 denotes m/s
T95 21766-21778 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T96 22384-22385 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T97 22752-22764 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T98 22856-22861 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes Human
T99 22865-22870 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T100 23099-23109 http://purl.obolibrary.org/obo/CLO_0001658 denotes activities
T101 23114-23119 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T102 23218-23223 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T103 23239-23244 http://purl.obolibrary.org/obo/CLO_0007373 denotes Lowen
T104 23266-23271 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T105 23409-23414 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T106 23507-23517 http://purl.obolibrary.org/obo/CLO_0001658 denotes activities
T107 23587-23592 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T108 23640-23652 http://purl.obolibrary.org/obo/OBI_0000245 denotes Organization
T109 23675-23680 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T110 23684-23689 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T111 23773-23778 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T112 24203-24215 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T113 24401-24413 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T114 24524-24529 http://purl.obolibrary.org/obo/UBERON_0000473 denotes tests
T115 24557-24569 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T116 24591-24596 http://purl.obolibrary.org/obo/UBERON_0000982 denotes joint
T117 24591-24596 http://purl.obolibrary.org/obo/UBERON_0004905 denotes joint
T118 24654-24666 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T119 24885-24888 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T120 24970-24973 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T121 25185-25188 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T122 25271-25274 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T123 25446-25451 http://purl.obolibrary.org/obo/UBERON_0000473 denotes tests
T124 25459-25464 http://purl.obolibrary.org/obo/UBERON_0000982 denotes joint
T125 25459-25464 http://purl.obolibrary.org/obo/UBERON_0004905 denotes joint
T126 25505-25517 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T127 26342-26354 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T128 26471-26481 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrument
T129 26798-26799 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T130 27449-27454 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T131 27511-27512 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T132 27519-27520 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T133 27565-27566 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T134 27573-27574 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T135 27931-27936 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T136 28087-28088 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T137 28321-28322 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T138 28358-28359 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T139 28368-28371 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T140 28430-28431 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T141 28542-28545 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T142 29079-29080 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T143 29122-29127 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T144 29366-29371 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T145 29529-29530 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T146 29546-29547 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T147 29740-29741 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T148 29764-29769 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T149 29815-29816 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T150 29912-29917 http://purl.obolibrary.org/obo/CLO_0001302 denotes 3) (4
T151 29981-29982 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T152 30150-30153 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T153 30300-30303 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T154 30364-30365 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T155 30813-30814 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T156 30982-30985 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T157 31125-31128 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T158 31185-31186 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T159 31789-31790 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T160 31847-31848 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T161 32121-32133 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T162 33173-33174 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T163 33231-33232 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T164 33285-33290 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T165 33842-33843 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T166 33897-33898 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T167 34055-34056 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T168 35432-35437 http://purl.obolibrary.org/obo/CLO_0001302 denotes 3) (4
T169 35474-35475 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T170 35590-35593 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T171 36154-36157 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T172 36697-36698 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T173 37709-37710 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T174 37757-37758 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T175 38023-38035 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T176 38408-38413 http://purl.obolibrary.org/obo/CLO_0001302 denotes 3) (4
T177 38450-38451 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T178 38566-38569 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T179 39132-39135 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T180 39670-39671 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T181 40683-40684 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T182 40731-40732 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T183 40997-41009 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T184 41242-41243 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T185 41255-41259 http://purl.obolibrary.org/obo/UBERON_0000473 denotes test
T186 41448-41449 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T187 41539-41540 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T188 42055-42063 http://purl.obolibrary.org/obo/CLO_0007225 denotes labelled
T189 42094-42095 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T190 42206-42207 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T191 42275-42276 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T192 42988-42993 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T193 42994-42997 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T194 43241-43253 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T195 44140-44141 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T196 44779-44791 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T197 44845-44850 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T198 45079-45080 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T199 45180-45185 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T200 45424-45429 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T201 45471-45482 http://purl.obolibrary.org/obo/OBI_0000968 denotes instruments
T202 45872-45873 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T203 46496-46497 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T204 46504-46505 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T205 47322-47323 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T206 47700-47712 http://purl.obolibrary.org/obo/OBI_0000245 denotes Organization
T207 47784-47789 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T208 47793-47798 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T209 48526-48527 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T210 48841-48842 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T211 49342-49347 http://purl.obolibrary.org/obo/CLO_0001302 denotes 3) (4
T212 49888-49891 http://purl.obolibrary.org/obo/CLO_0001003 denotes 163
T213 51326-51338 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T214 51383-51395 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T215 52057-52067 http://purl.obolibrary.org/obo/CLO_0001658 denotes activities
T216 52668-52669 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T217 53127-53130 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T218 53319-53320 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T219 53463-53468 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T220 53504-53505 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T221 53640-53645 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T222 53649-53654 http://purl.obolibrary.org/obo/NCBITaxon_9606 denotes human
T223 53716-53719 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T224 53728-53729 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T225 53830-53831 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T226 53848-53849 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T227 53930-53931 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T228 54028-54033 http://purl.obolibrary.org/obo/UBERON_0000982 denotes Joint
T229 54028-54033 http://purl.obolibrary.org/obo/UBERON_0004905 denotes Joint
T230 55338-55344 http://purl.obolibrary.org/obo/CLO_0001658 denotes active
T231 55397-55402 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T232 55669-55670 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T233 55959-55961 http://purl.obolibrary.org/obo/CLO_0050507 denotes 22
T234 56173-56174 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T235 56300-56308 http://purl.obolibrary.org/obo/CLO_0001658 denotes activity
T236 56373-56382 http://www.ebi.ac.uk/efo/EFO_0000876 denotes extremely
T237 56906-56909 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T238 57092-57097 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T239 57287-57290 http://purl.obolibrary.org/obo/PR_000001343 denotes aim
T240 57810-57815 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T241 58578-58590 http://purl.obolibrary.org/obo/OBI_0000245 denotes Organization
T242 59003-59005 http://purl.obolibrary.org/obo/CLO_0050509 denotes 27
T243 59308-59309 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T244 59394-59399 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T245 59592-59597 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T246 59918-59928 http://purl.obolibrary.org/obo/CLO_0001658 denotes activities
T247 60049-60054 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T248 60086-60096 http://purl.obolibrary.org/obo/CLO_0001658 denotes activities
T249 60220-60225 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T250 60304-60309 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T251 60851-60858 http://purl.obolibrary.org/obo/UBERON_0000473 denotes testing
T252 62066-62069 http://purl.obolibrary.org/obo/CLO_0054060 denotes 102
T253 62097-62099 http://purl.obolibrary.org/obo/CLO_0053733 denotes 11
T254 62230-62232 http://purl.obolibrary.org/obo/CLO_0050510 denotes 18
T255 62473-62478 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T256 64132-64137 http://purl.obolibrary.org/obo/UBERON_0000473 denotes tests
T257 64464-64465 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T258 64523-64535 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T259 64626-64627 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T260 64770-64775 http://purl.obolibrary.org/obo/CLO_0001302 denotes 3) (4
T261 64837-64840 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T262 65587-65590 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T263 66662-66674 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T264 66959-66971 http://purl.obolibrary.org/obo/OBI_0000968 denotes instrumental
T265 67028-67039 http://purl.obolibrary.org/obo/OBI_0000968 denotes instruments
T266 67448-67449 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T267 69199-69200 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T268 69498-69500 http://purl.obolibrary.org/obo/CLO_0037066 denotes tk
T269 69516-69517 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T270 69604-69605 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T271 69771-69772 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T272 69777-69778 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T273 70406-70409 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T274 70470-70473 http://purl.obolibrary.org/obo/CLO_0050236 denotes lag
T275 71245-71246 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T276 71394-71395 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T277 72283-72284 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T278 72405-72406 http://purl.obolibrary.org/obo/CLO_0001021 denotes B
T279 72483-72488 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T280 73171-73172 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T281 73521-73522 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T282 73689-73690 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T283 73972-73976 http://purl.obolibrary.org/obo/UBERON_0001456 denotes face
T284 74174-74175 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T285 74519-74524 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T286 74631-74636 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T287 75049-75052 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T288 75920-75921 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T289 76088-76091 http://purl.obolibrary.org/obo/CLO_0051582 denotes has
T290 76342-76343 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T291 76525-76526 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T292 76581-76586 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus
T293 76635-76636 http://purl.obolibrary.org/obo/CLO_0001020 denotes A
T294 76910-76911 http://purl.obolibrary.org/obo/CLO_0001020 denotes a
T295 77135-77140 http://purl.obolibrary.org/obo/NCBITaxon_10239 denotes virus

LitCovid-PD-GO-BP

Id Subject Object Predicate Lexical cue
T1 1150-1156 http://purl.obolibrary.org/obo/GO_0040007 denotes growth
T2 7048-7054 http://purl.obolibrary.org/obo/GO_0040007 denotes growth
T3 7367-7379 http://purl.obolibrary.org/obo/GO_0000003 denotes reproduction
T4 29553-29559 http://purl.obolibrary.org/obo/GO_0040007 denotes growth
T5 43501-43513 http://purl.obolibrary.org/obo/GO_0000003 denotes reproduction
T6 43864-43872 http://purl.obolibrary.org/obo/GO_0007610 denotes behavior
T7 44462-44470 http://purl.obolibrary.org/obo/GO_0007610 denotes behavior
T8 44558-44570 http://purl.obolibrary.org/obo/GO_0000003 denotes reproduction
T9 54812-54821 http://purl.obolibrary.org/obo/GO_0006810 denotes transport
T10 55689-55694 http://purl.obolibrary.org/obo/GO_0042330 denotes taxis
T11 57673-57682 http://purl.obolibrary.org/obo/GO_0006810 denotes Transport
T12 57855-57864 http://purl.obolibrary.org/obo/GO_0006810 denotes Transport
T13 58005-58011 http://purl.obolibrary.org/obo/GO_0060361 denotes flight
T14 68009-68021 http://purl.obolibrary.org/obo/GO_0000003 denotes reproduction

LitCovid-PD-HP

Id Subject Object Predicate Lexical cue hp_id
T1 23-32 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T2 207-216 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T3 263-272 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T4 7512-7536 Phenotype denotes susceptible to infection http://purl.obolibrary.org/obo/HP_0002719|http://purl.obolibrary.org/obo/HP_0002719
T5 8861-8866 Phenotype denotes falls http://purl.obolibrary.org/obo/HP_0002527|http://purl.obolibrary.org/obo/HP_0002527
T6 11143-11152 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T7 33627-33646 Phenotype denotes social interactions http://purl.obolibrary.org/obo/HP_0008763|http://purl.obolibrary.org/obo/HP_0008763
T8 52025-52044 Phenotype denotes social interactions http://purl.obolibrary.org/obo/HP_0008763|http://purl.obolibrary.org/obo/HP_0008763
T9 56781-56786 Phenotype denotes fever http://purl.obolibrary.org/obo/HP_0001945|http://purl.obolibrary.org/obo/HP_0001945
T10 60895-60900 Phenotype denotes fever http://purl.obolibrary.org/obo/HP_0001945|http://purl.obolibrary.org/obo/HP_0001945
T11 61024-61029 Phenotype denotes fever http://purl.obolibrary.org/obo/HP_0001945|http://purl.obolibrary.org/obo/HP_0001945
T12 61033-61042 Phenotype denotes dry cough http://purl.obolibrary.org/obo/HP_0031246|http://purl.obolibrary.org/obo/HP_0031246
T1 23-32 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T2 207-216 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T3 263-272 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T4 7512-7536 Phenotype denotes susceptible to infection http://purl.obolibrary.org/obo/HP_0002719|http://purl.obolibrary.org/obo/HP_0002719
T5 8861-8866 Phenotype denotes falls http://purl.obolibrary.org/obo/HP_0002527|http://purl.obolibrary.org/obo/HP_0002527
T6 11143-11152 Phenotype denotes pneumonia http://purl.obolibrary.org/obo/HP_0002090|http://purl.obolibrary.org/obo/HP_0002090
T7 33627-33646 Phenotype denotes social interactions http://purl.obolibrary.org/obo/HP_0008763|http://purl.obolibrary.org/obo/HP_0008763
T8 52025-52044 Phenotype denotes social interactions http://purl.obolibrary.org/obo/HP_0008763|http://purl.obolibrary.org/obo/HP_0008763
T9 56781-56786 Phenotype denotes fever http://purl.obolibrary.org/obo/HP_0001945|http://purl.obolibrary.org/obo/HP_0001945
T10 60895-60900 Phenotype denotes fever http://purl.obolibrary.org/obo/HP_0001945|http://purl.obolibrary.org/obo/HP_0001945
T11 61024-61029 Phenotype denotes fever http://purl.obolibrary.org/obo/HP_0001945|http://purl.obolibrary.org/obo/HP_0001945
T12 61033-61042 Phenotype denotes dry cough http://purl.obolibrary.org/obo/HP_0031246|http://purl.obolibrary.org/obo/HP_0031246

LitCovid-sentences

Id Subject Object Predicate Lexical cue
T11 0-12 Sentence denotes Introduction
T12 13-164 Sentence denotes The first pneumonia case of unknown cause was found close to a seafood market in Wuhan, the capital city of Hubei province, China, on December 8, 2019.
T13 165-258 Sentence denotes Several clusters of patients with similar pneumonia were reported through late December 2019.
T14 259-404 Sentence denotes The pneumonia was later identified to be caused by a new coronavirus (severe acute respiratory syndrome coronavirus 2, or SARS-CoV-2) (Zhu et al.
T15 405-737 Sentence denotes 2020), later named Coronavirus Disease 2019 (COVID-19) by the World Health Organization (WHO).1 While the seafood market was closed on January 1, 2020, a massive outflow of travelers during the Chinese Spring Festival travel rush (Chunyun) in mid-January2 led to the rapid spread of COVID-19 throughout China and to other countries.
T16 738-835 Sentence denotes The first confirmed case outside Wuhan in China was reported in Shenzhen on January 19 (Li et al.
T17 836-842 Sentence denotes 2020).
T18 843-947 Sentence denotes As of April 5, over 1.2 million confirmed cases were reported in at least 200 countries or territories.3
T19 948-1170 Sentence denotes Two fundamental strategies have been taken globally, one focused on mitigating but not necessarily stopping the virus spread and the other relying on more stringent measures to suppress and reverse the growth trajectories.
T20 1171-1500 Sentence denotes While most Western countries initially implemented the former strategy, more and more of them (including most European countries and the USA) have since shifted towards the more stringent suppression strategy, and some other countries such as China, Singapore, and South Korea have adopted the latter strategy from the beginning.
T21 1501-1588 Sentence denotes In particular, China has rolled out one of the most stringent public health strategies.
T22 1589-1823 Sentence denotes That strategy involves city lockdowns and mandatory quarantines to ban or restrict traffic since January 23, social distance–encouraging strategies since January 28, and a centralized treatment and isolation strategy since February 2.
T23 1824-2121 Sentence denotes This study estimates how the number of daily newly confirmed COVID-19 cases in a city is influenced by the number of new COVID-19 cases in the same city, nearby cities, and Wuhan during the preceding 2 weeks using the data on confirmed COVID-19 case counts in China from January 19 to February 29.
T24 2122-2283 Sentence denotes By comparing the estimates before and after February 2, we examine whether the comprehensive set of policies at the national scale delays the spread of COVID-19.
T25 2284-2524 Sentence denotes Besides, we estimate the impacts of social distancing measures in reducing the transmission rate utilizing the closed management of communities and family outdoor restrictions policies that were gradually rolled out across different cities.
T26 2525-2753 Sentence denotes As COVID-19 evolves into a global pandemic and mitigating strategies are faced with growing pressure to flatten the curve of virus transmissions, more and more nations are considering implementing stringent suppression measures.
T27 2754-3090 Sentence denotes Therefore, examining the factors that influence the transmission of COVID-19 and the effectiveness of the large-scale mandatory quarantine and social distancing measures in China not only adds to our understanding of the containment of COVID-19 but also provides insights into future prevention work against similar infectious diseases.
T28 3091-3276 Sentence denotes In a linear equation of the current number of new cases on the number of new cases in the past, the unobserved determinants of new infections may be serially correlated for two reasons.
T29 3277-3383 Sentence denotes First, the number of people infected by a disease usually first increases, reaches a peak, and then drops.
T30 3384-3546 Sentence denotes Second, there are persistent, unobservable variables, such as clusters that generate large numbers of infections, people’s living habits, and government policies.
T31 3547-3718 Sentence denotes Serial correlations in errors give rise to correlations between the lagged numbers of cases and the error term, rendering the ordinary least square (OLS) estimator biased.
T32 3719-3961 Sentence denotes Combining insights in Adda (2016), the existing knowledge of the incubation period of COVID-19 (World Health Organization 2020b), and data on weather conditions that affect the transmission rates of COVID-19 (Lowen and Steel 2014; Wang et al.
T33 3962-4072 Sentence denotes 2020b), we construct instrumental variables for the number of new COVID-19 cases during the preceding 2 weeks.
T34 4073-4310 Sentence denotes Weather characteristics in the previous third and fourth weeks do not directly affect the number of new COVID-19 cases after controlling for the number of new COVID-19 cases and weather conditions in the preceding first and second weeks.
T35 4311-4414 Sentence denotes Therefore, our estimated impacts have causal interpretations and reflect population transmission rates.
T36 4415-4526 Sentence denotes Meanwhile, we estimate the mediating effects of socioeconomic factors on the transmission of COVID-19 in China.
T37 4527-4686 Sentence denotes These factors include population flow out of Wuhan, the distance between cities, GDP per capita, the number of doctors, and contemporaneous weather conditions.
T38 4687-4982 Sentence denotes We examine whether population flows from the origin of the COVID-19 outbreak, which is a major city and an important transportation hub in central China, can explain the spread of the virus using data on real-time travel intensity between cities that have recently become available for research.
T39 4983-5205 Sentence denotes Realizing the urgency of forestalling widespread community transmissions in areas that had not seen many infections, in late January, many Chinese cities implemented public health measures that encourage social distancing.
T40 5206-5290 Sentence denotes We also examine the impacts of these measures on curtailing the spread of the virus.
T41 5291-5426 Sentence denotes We find that transmission rates were lower in February than in January, and cities outside Hubei province had lower transmission rates.
T42 5427-5601 Sentence denotes Preventing the transmission rates in non-Hubei cities from increasing to the level observed in late January in Hubei caused the largest reduction in the number of infections.
T43 5602-5778 Sentence denotes Apart from the policies implemented nationwide, the additional social distancing policies imposed in some cities in late January further helped reduce the number of infections.
T44 5779-5843 Sentence denotes By mid February, the spread of the virus was contained in China.
T45 5844-6077 Sentence denotes While many socioeconomic factors moderated the spread of the virus, the actual population flow from the source posed a higher risk to destinations than other factors such as geographic proximity and similarity in economic conditions.
T46 6078-6147 Sentence denotes Our analysis contributes to the existing literature in three aspects.
T47 6148-6316 Sentence denotes First, our analysis is connected to the economics and epidemiological literature on the determinants of the spread of infectious diseases and prevention of such spread.
T48 6317-6386 Sentence denotes Existing studies find that reductions in population flow (Zhan et al.
T49 6387-6405 Sentence denotes 2020; Zhang et al.
T50 6406-6423 Sentence denotes 2020; Fang et al.
T51 6424-6540 Sentence denotes 2020) and interpersonal contact from holiday school closings (Adda 2016), reactive school closures (Litvinova et al.
T52 6541-6858 Sentence denotes 2019), public transportation strikes (Godzinski and Suarez Castillo 2019), strategic targeting of travelers from high-incidence locations (Milusheva 2017), and paid sick leave to keep contagious workers at home (Barmby and Larguem 2009; Pichler and Ziebarth 2017) can mitigate the prevalence of disease transmissions.
T53 6859-7036 Sentence denotes In addition, studies show viruses spread faster during economic booms (Adda 2016), increases in employment are associated with increased incidence of influenza (Markowitz et al.
T54 7037-7148 Sentence denotes 2019), and growth in trade can significantly increase the spread of influenza (Adda 2016) and HIV (Oster 2012).
T55 7149-7299 Sentence denotes Vaccination (Maurer 2009; White 2019) and sunlight exposure (Slusky and Zeckhauser 2018) are also found effective in reducing the spread of influenza.
T56 7300-7537 Sentence denotes Second, our paper adds to the epidemiological studies on the basic reproduction number (R0) of COVID-19, i.e., the average number of cases directly generated by one case in a population where all individuals are susceptible to infection.
T57 7538-7753 Sentence denotes Given the short time period since the beginning of the COVID-19 outbreak, research is urgently needed to assess the dynamics of transmissions and the implications for how the COVID-19 outbreak will evolve (Wu et al.
T58 7754-7768 Sentence denotes 2020b, 2020c).
T59 7769-8377 Sentence denotes Liu et al. (2020) identify 12 studies that estimated the basic reproductive number in the wide range of 1.4 to 6.5 (with a mean of 3.28 and a median of 2.79) for Wuhan, Hubei, China, or overseas during January 1 through January 28, 2020.4 Our R0 estimate relies on spatially disaggregated data during an extended period (until February 29, 2020) to mitigate potential biases, and the instrumental variable approach we use isolates the causal effect of virus transmissions and imposes fewer restrictions on the relationship between the unobserved determinants of new cases and the number of cases in the past.
T60 8378-8648 Sentence denotes Simultaneously considering a more comprehensive set of factors in the model that may influence virus spread, we find that one case generates 2.992 more cases within 2 weeks (1.876 if cities in Hubei province are excluded) in the sub-sample from January 19 to February 1.
T61 8649-8769 Sentence denotes In the sub-sample from February 2 to February 29, the transmission rates fall to 1.243 (0.614 excluding Hubei province).
T62 8770-8956 Sentence denotes Our estimate of R0 for the period in late January 2020 that overlaps with existing studies falls well within the range of the estimated R0 in the emerging COVID-19 literature (Liu et al.
T63 8957-8963 Sentence denotes 2020).
T64 8964-9091 Sentence denotes Third, our study contributes to the assessments of public health measures aiming at reducing virus transmissions and mortality.
T65 9092-9259 Sentence denotes Through a set of policy simulations, we report initial evidence on the number of avoided infections through the end of February 2020 for cities outside Hubei province.
T66 9260-9606 Sentence denotes Specifically, the stringent health policies at the national and provincial levels reduced the transmission rate and resulted in 1,408,479 (95% CI, 815,585 to 2,001,373) fewer infections and potentially 56,339 fewer deaths.5 In contrast, the effects of the Wuhan lockdown and local non-pharmaceutical interventions (NPIs) are considerably smaller.
T67 9607-9841 Sentence denotes As a result of the Wuhan lockdown, closed management of communities, and family outdoor restrictions, 31,071 (95% CI, 8296 to 53,845), 3803 (95% CI, 1142 to 6465), and 2703 (95% CI, 654 to 4751) fewer cases were avoided, respectively.
T68 9842-9927 Sentence denotes These three policies may respectively avoid 1,243 deaths, 152 deaths, and 108 deaths.
T69 9928-10148 Sentence denotes Making some additional assumptions, such as the value of statistical life and lost productive time, these estimates may provide the basis for more rigorous cost-benefit analysis regarding relevant public health measures.
T70 10149-10184 Sentence denotes This paper is organized as follows.
T71 10185-10226 Sentence denotes Section 2 introduces the empirical model.
T72 10227-10294 Sentence denotes Section 3 discusses our data and the construction of key variables.
T73 10295-10326 Sentence denotes Section 4 presents the results.
T74 10327-10465 Sentence denotes Section 5 documents the public health measures implemented in China, whose impacts are quantified in a series of counterfactual exercises.
T75 10466-10486 Sentence denotes Section 6 concludes.
T76 10487-10612 Sentence denotes The Appendix contains additional details on the instrumental variables, data quality, and the computation of counterfactuals.
T77 10614-10629 Sentence denotes Empirical model
T78 10630-10696 Sentence denotes Our analysis sample includes 304 prefecture-level cities in China.
T79 10697-10785 Sentence denotes We exclude Wuhan, the capital city of Hubei province, from our analysis for two reasons.
T80 10786-10879 Sentence denotes First, the epidemic patterns in Wuhan are significantly different from those in other cities.
T81 10880-11039 Sentence denotes Some confirmed cases in Wuhan contracted the virus through direct exposure to Huanan Seafood Wholesale Market, which is the most probable origin of the virus6.
T82 11040-11108 Sentence denotes In other cities, infections arise from human-to-human transmissions.
T83 11109-11368 Sentence denotes Second, COVID-19 cases were still pneumonia of previously unknown virus infections in people’s perception until early January so that Wuhan’s health care system became overwhelmed as the number of new confirmed cases increased exponentially since mid-January.
T84 11369-11526 Sentence denotes This may have caused severe delay and measurement errors in the number of cases reported in Wuhan, and to a lesser extent, in other cities in Hubei province.
T85 11527-11634 Sentence denotes To alleviate this concern, we also conduct analyses excluding all cities in Hubei province from our sample.
T86 11635-11758 Sentence denotes To model the spread of the virus, we consider within-city spread and between-city transmissions simultaneously (Adda 2016).
T87 11759-11975 Sentence denotes Our starting point is yct=∑s=114αwithin,syc,t−s+∑s=114αbetween,s∑r≠cdcr−1yr,t−s+∑s=114ρszt−s+xctβ+𝜖ct, where c is a city other than Wuhan, and yct is the number of new confirmed cases of COVID-19 in city c on date t.
T88 11976-12157 Sentence denotes Regarding between-city transmissions, dcr is the log of the distance between cities c and r, and ∑r≠cdcr−1yrt is the inverse distance weighted sum of new infections in other cities.
T89 12158-12458 Sentence denotes Considering that COVID-19 epidemic originated from one city (Wuhan) and that most of the early cases outside Wuhan can be traced to previous contacts with persons in Wuhan, we also include the number of new confirmed cases in Wuhan (zt) to model how the virus spreads to other cities from its source.
T90 12459-12722 Sentence denotes We may include lagged yct, yrt, and zt up to 14 days based on the estimates of the durations of the infectious period and the incubation period in the literature7. xct includes contemporaneous weather controls, city, and day fixed effects8. 𝜖ct is the error term.
T91 12723-12765 Sentence denotes Standard errors are clustered by province.
T92 12766-12980 Sentence denotes To make it easier to interpret the coefficients, we assume that the transmission dynamics (αwithin,s, αbetween,s, ρs) are the same within s = 1,⋯ ,7 and s = 8,⋯ ,14, respectively, but can be different across weeks.
T93 12981-13182 Sentence denotes Specifically, we take averages of lagged yct, yrt, and zt by week, as y¯ctτ=17∑s=17yct−7τ−1−s, y¯rtτ=17∑s=17yrt−7τ−1−s, and z¯tτ=17∑s=17zt−7τ−1−s, in which τ denotes the preceding first or second week.
T94 13183-13285 Sentence denotes Our main model is 1 yct=∑τ=12αwithin,τy¯ctτ+∑τ=12αbetween,τ∑r≠cdcr−1y¯rtτ+∑τ=12ρτz¯tτ+xctβ+𝜖ct.Model A
T95 13286-13621 Sentence denotes We also consider more parsimonious model specifications, such as the model that only considers within-city transmissions, 2 yct=∑τ=12αwithin,τy¯ctτ+xctβ+𝜖ct,and the model where the time lagged variables are averages over the preceding 2 weeks, yct=αwithin114∑s=114yc,t−s+αbetween114∑s=114∑r≠cdcr−1yr,t−s+ρ114∑s=114zt−s+xctβ+𝜖ct.Model B
T96 13622-13718 Sentence denotes There are several reasons that y¯ctτ, y¯rtτ, and z¯tτ may be correlated with the error term 𝜖ct.
T97 13719-13937 Sentence denotes The unobserved determinants of new infections such as local residents’ and government’s preparedness are likely correlated over time, which causes correlations between the error term and the lagged dependent variables.
T98 13938-14077 Sentence denotes As noted by the World Health Organization (2020b), most cases that were locally generated outside Hubei occurred in households or clusters.
T99 14078-14315 Sentence denotes The fact that big clusters give rise to a large number of cases within a short period of time may still be compatible with a general low rate of community transmissions, especially when measures such as social distancing are implemented.
T100 14316-14469 Sentence denotes Therefore, the coefficients are estimated by two-stage least squares in order to obtain consistent estimates on the transmission rates in the population.
T101 14470-14704 Sentence denotes In Eq. 2, the instrumental variables include averages of daily maximum temperature, total precipitation, average wind speed, and the interaction between precipitation and wind speed, for city c in the preceding third and fourth weeks.
T102 14705-14802 Sentence denotes Detailed discussion of the selection of weather characteristics as instruments is in Section 3.2.
T103 14803-14857 Sentence denotes The timeline of key variables are displayed in Fig. 1.
T104 14858-15139 Sentence denotes The primary assumption on the instrumental variables is that weather conditions before 2 weeks do not affect the likelihood that a person susceptible to the virus contracts the disease, conditional on weather conditions and the number of infectious people within the 2-week window.
T105 15140-15316 Sentence denotes On the other hand, they affect the number of other persons who have become infectious within the 2-week window, because they may have contracted the virus earlier than 2 weeks.
T106 15317-15475 Sentence denotes These weather variables are exogenous to the error term and affect the spread of the virus, which have been used by Adda (2016) to instrument flu infections9.
T107 15476-15508 Sentence denotes Fig. 1 Timeline of key variables
T108 15509-15736 Sentence denotes Another objective of this paper is to quantify the effect of various socioeconomic factors in mediating the transmission rates of the virus, which may identify potential behavioral and socioeconomic risk factors for infections.
T109 15737-16022 Sentence denotes For within-city transmissions, we consider the effects of local public health measures (see Section 5 for details) and the mediating effects of population density, level of economic development, number of doctors, and environmental factors such as temperature, wind, and precipitation.
T110 16023-16203 Sentence denotes For between-city transmissions, apart from proximity measures based on geographic distance, we also consider similarity in population density and the level of economic development.
T111 16204-16309 Sentence denotes To measure the spread of the virus from Wuhan, we also include the number of people traveling from Wuhan.
T112 16310-16349 Sentence denotes The full empirical model is as follows:
T113 16350-16711 Sentence denotes 3 yct=∑τ=12∑k=1Kwithinαwithin,τkh¯ctkτy¯ctτ+∑τ=12∑k=1Kbetween∑r≠cαbetween,τkm¯crtkτy¯rtτ+∑τ=12∑k=1KWuhanρτkm¯c,Wuhan,tkτz¯tτ+xctβ+𝜖ct,where h¯ctkτ includes dummies for local public health measures and the mediating factors for local transmissions. m¯crtkτ and m¯c,Wuhan,tkτ are the mediating factors for between-city transmissions and imported cases from Wuhan.
T114 16713-16717 Sentence denotes Data
T115 16719-16728 Sentence denotes Variables
T116 16729-16918 Sentence denotes January 19, 2020, is the first day that COVID-19 cases were reported outside of Wuhan, so we collect the daily number of new cases of COVID-19 for 305 cities from January 19 to February 29.
T117 16919-17000 Sentence denotes All these data are reported by 32 provincial-level Health Commissions in China10.
T118 17001-17151 Sentence denotes Figure 2 shows the time patterns of daily confirmed new cases in Wuhan, in Hubei province outside Wuhan, and in non-Hubei provinces of mainland China.
T119 17152-17372 Sentence denotes Because Hubei province started to include clinically diagnosed cases into new confirmed cases on February 12, we notice a spike in the number of new cases in Wuhan and other cities in Hubei province on this day (Fig. 2).
T120 17373-17482 Sentence denotes The common effects of such changes in case definitions on other cities can be absorbed by time fixed effects.
T121 17483-17572 Sentence denotes As robustness checks, we re-estimate models A and B without the cities in Hubei province.
T122 17573-17854 Sentence denotes In addition, since the number of clinically diagnosed cases at the city level was reported for the days of February 12, 13, and 14, we recalculated the daily number of new cases for the 3 days by removing the clinically diagnosed cases from our data and re-estimate models A and B.
T123 17855-17897 Sentence denotes Our main findings still hold (Appendix B).
T124 17898-17970 Sentence denotes Fig. 2 Number of daily new confirmed cases of COVID-19 in mainland China
T125 17971-18123 Sentence denotes Regarding the explanatory variables, we calculate the number of new cases of COVID-19 in the preceding first and second weeks for each city on each day.
T126 18124-18515 Sentence denotes To estimate the impacts of new COVID-19 cases in other cities, we first calculate the geographic distance between a city and all other cities using the latitudes and longitudes of the centroids of each city and then calculate the weighted sum of the number of COVID-19 new cases in all other cities using the inverse of log distance between a city and each of the other cities as the weight.
T127 18516-18681 Sentence denotes Since the COVID-19 outbreak started from Wuhan, we also calculate the weighted number of COVID-19 new cases in Wuhan using the inverse of log distance as the weight.
T128 18682-18891 Sentence denotes Furthermore, to explore the mediating impact of population flow from Wuhan, we collect the daily population flow index from Baidu that proxies for the total intensity of migration from Wuhan to other cities11.
T129 18892-19008 Sentence denotes Figure 3 plots the Baidu index of population flow out of Wuhan and compares its values this year with those in 2019.
T130 19009-19174 Sentence denotes We then interact the flow index with the share that a destination city takes (Fig. 4) to construct a measure on the population flow from Wuhan to a destination city.
T131 19175-19360 Sentence denotes Other mediating variables include population density, GDP per capita, and the number of doctors at the city level, which we collect from the most recent China city statistical yearbook.
T132 19361-19420 Sentence denotes Table 1 presents the summary statistics of these variables.
T133 19421-19535 Sentence denotes On average, GDP per capita and population density are larger in cities outside Hubei province than those in Hubei.
T134 19536-19615 Sentence denotes Compared with cities in Hubei province, cities outside Hubei have more doctors.
T135 19616-19664 Sentence denotes Fig. 3 Baidu index of population flow from Wuhan
T136 19665-19720 Sentence denotes Fig. 4 Destination shares in population flow from Wuhan
T137 19721-19747 Sentence denotes Table 1 Summary statistics
T138 19748-19772 Sentence denotes Variable N Mean Std dev.
T139 19773-19777 Sentence denotes Min.
T140 19778-19789 Sentence denotes Median Max.
T141 19790-19806 Sentence denotes Non Hubei cities
T142 19807-19827 Sentence denotes City characteristics
T143 19828-19888 Sentence denotes GDP per capita, 10,000RMB 288 5.225 3.025 1.141 4.327 21.549
T144 19889-19959 Sentence denotes Population density, per km2 288 428.881 374.138 9.049 327.115 3444.092
T145 19960-20015 Sentence denotes # of doctors, 10,000 288 1.086 1.138 0.030 0.805 10.938
T146 20016-20052 Sentence denotes Time varying variables, Jan 19–Feb 1
T147 20053-20119 Sentence denotes Daily # of new confirmed cases 4032 1.303 3.608 0.000 0.000 60.000
T148 20120-20194 Sentence denotes Weekly average max. temperature, ∘C 4032 8.520 8.525 − 18.468 7.932 29.833
T149 20195-20262 Sentence denotes Weekly average precipitation, mm 4032 0.238 0.558 0.000 0.033 5.570
T150 20263-20328 Sentence denotes Weekly average wind speed, m/s 4032 2.209 0.842 0.816 2.014 6.386
T151 20329-20365 Sentence denotes Time varying variables, Feb 1–Feb 29
T152 20366-20433 Sentence denotes Daily # of new confirmed cases 8064 0.927 3.461 0.000 0.000 201.000
T153 20434-20510 Sentence denotes Weekly average max. temperature, ∘C 8064 11.909 7.983 − 18.032 12.814 28.791
T154 20511-20578 Sentence denotes Weekly average precipitation, mm 8064 0.193 0.491 0.000 0.027 5.432
T155 20579-20644 Sentence denotes Weekly average wind speed, m/s 8064 2.461 0.913 0.654 2.352 7.129
T156 20645-20686 Sentence denotes Cities in Hubei province, excluding Wuhan
T157 20687-20707 Sentence denotes City characteristics
T158 20708-20766 Sentence denotes GDP per capita, 10,000RMB 16 4.932 1.990 2.389 4.306 8.998
T159 20767-20836 Sentence denotes Population density, per km2 16 416.501 220.834 24.409 438.820 846.263
T160 20837-20890 Sentence denotes # of doctors, 10,000 16 0.698 0.436 0.017 0.702 1.393
T161 20891-20927 Sentence denotes Time varying variables, Jan 19–Feb 1
T162 20928-20996 Sentence denotes Daily # of new confirmed cases 224 22.165 35.555 0.000 7.000 276.000
T163 20997-21067 Sentence denotes Weekly average max. temperature, ∘C 224 8.709 1.602 1.278 8.905 10.889
T164 21068-21134 Sentence denotes Weekly average precipitation, mm 224 0.261 0.313 0.000 0.160 1.633
T165 21135-21199 Sentence denotes Weekly average wind speed, m/s 224 1.970 0.600 0.893 1.975 3.439
T166 21200-21236 Sentence denotes Time varying variables, Feb 1–Feb 29
T167 21237-21305 Sentence denotes Daily # of new confirmed cases 448 28.871 51.793 0.000 8.000 424.000
T168 21306-21378 Sentence denotes Weekly average max. temperature, ∘C 448 14.569 2.985 1.452 14.448 23.413
T169 21379-21445 Sentence denotes Weekly average precipitation, mm 448 0.201 0.233 0.000 0.133 1.535
T170 21446-21510 Sentence denotes Weekly average wind speed, m/s 448 2.063 0.648 0.705 2.070 4.174
T171 21511-21594 Sentence denotes Variables of the city characteristics are obtained from City Statistical Yearbooks.
T172 21595-21651 Sentence denotes Time varying variables are observed daily for each city.
T173 21652-21721 Sentence denotes Weekly average weather variables are averages over the preceding week
T174 21722-21818 Sentence denotes We rely on meteorological data to construct instrumental variables for the endogenous variables.
T175 21819-22077 Sentence denotes The National Oceanic and Atmospheric Administration (NOAA) provides average, maximum, and minimum temperatures, air pressure, average and maximum wind speeds, precipitation, snowfall amount, and dew point for 362 weather stations at the daily level in China.
T176 22078-22346 Sentence denotes To merge the meteorological variables with the number of new cases of COVID-19, we first calculate daily weather variables for each city on each day from 2019 December to 2020 February from station-level weather records following the inverse distance weighting method.
T177 22347-22529 Sentence denotes Specifically, for each city, we draw a circle of 100 km from the city’s centroid and calculate the weighted average daily weather variables using stations within the 100-km circle12.
T178 22530-22624 Sentence denotes We use the inverse of the distance between the city’s centroid and each station as the weight.
T179 22625-22737 Sentence denotes Second, we match the daily weather variables to the number of new cases of COVID-19 based on city name and date.
T180 22739-22774 Sentence denotes Selection of instrumental variables
T181 22775-22855 Sentence denotes The transmission rate of COVID-19 may be affected by many environmental factors.
T182 22856-22981 Sentence denotes Human-to-human transmission of COVID-19 is mostly through droplets and contacts (National Health Commission of the PRC 2020).
T183 22982-23134 Sentence denotes Weather conditions such as rainfall, wind speed, and temperature may shape infections via their influences on social activities and virus transmissions.
T184 23135-23261 Sentence denotes For instance, increased precipitation results in higher humidity, which may weaken virus transmissions (Lowen and Steel 2014).
T185 23262-23326 Sentence denotes The virus may survive longer with lower temperature (Wang et al.
T186 23327-23347 Sentence denotes 2020b; Puhani 2020).
T187 23348-23429 Sentence denotes Greater wind speed and therefore ventilated air may decrease virus transmissions.
T188 23430-23518 Sentence denotes In addition, increased rainfall and lower temperature may also reduce social activities.
T189 23519-23660 Sentence denotes Newly confirmed COVID-19 cases typically arise from contracting the virus within 2 weeks in the past (e.g., World Health Organization 2020b).
T190 23661-23836 Sentence denotes The extent of human-to-human transmission is determined by the number of people who have already contracted the virus and the environmental conditions within the next 2 weeks.
T191 23837-24127 Sentence denotes Conditional on the number of people who are infectious and environmental conditions in the previous first and second weeks, it is plausible that weather conditions further in the past, i.e., in the previous third and fourth weeks, should not directly affect the number of current new cases.
T192 24128-24352 Sentence denotes Based on the existing literature, we select weather characteristics as the instrumental variables, which include daily maximum temperature, precipitation, wind speed, and the interaction between precipitation and wind speed.
T193 24353-24502 Sentence denotes We then regress the endogenous variables on the instrumental variables, contemporaneous weather controls, city, date, and city by week fixed effects.
T194 24503-24690 Sentence denotes Table 2 shows that F-tests on the coefficients of the instrumental variables all reject joint insignificance, which confirms that overall the selected instrumental variables are not weak.
T195 24691-24779 Sentence denotes The coefficients of the first stage regressions are reported in Table 9 in the appendix.
T196 24780-24807 Sentence denotes Table 2 First stage results
T197 24808-24847 Sentence denotes Jan 19–Feb 29 Jan 19–Feb 1 Feb 2–Feb 29
T198 24848-24856 Sentence denotes Own city
T199 24857-24912 Sentence denotes Average # new cases, 1-week lag F stat 11.41 4.02 17.28
T200 24913-24941 Sentence denotes p value 0.0000 0.0000 0.0000
T201 24942-24996 Sentence denotes Average # new cases, 2-week lag F stat 8.46 5.66 10.25
T202 24997-25025 Sentence denotes p value 0.0000 0.0000 0.0000
T203 25026-25087 Sentence denotes Average # new cases, previous 14 days F stat 18.37 7.72 21.69
T204 25088-25116 Sentence denotes p value 0.0000 0.0000 0.0000
T205 25117-25156 Sentence denotes Other cities, inverse distance weighted
T206 25157-25213 Sentence denotes Average # new cases, 1-week lag F stat 19.10 36.29 17.58
T207 25214-25242 Sentence denotes p value 0.0000 0.0000 0.0000
T208 25243-25299 Sentence denotes Average # new cases, 2-week lag F stat 36.32 19.94 37.31
T209 25300-25328 Sentence denotes p value 0.0000 0.0000 0.0000
T210 25329-25391 Sentence denotes Average # new cases, previous 14 days F stat 47.08 33.45 46.22
T211 25392-25420 Sentence denotes p value 0.0000 0.0000 0.0000
T212 25421-25581 Sentence denotes This table reports the F-tests on the joint significance of the coefficients on the instrumental variables (IV) that are excluded from the estimation equations.
T213 25582-25865 Sentence denotes Our IV include weekly averages of daily maximum temperature, precipitation, wind speed, and the interaction between precipitation and wind speed, during the preceding third and fourth weeks, and the averages of these variables in other cities weighted by the inverse of log distance.
T214 25866-26039 Sentence denotes For each F statistic, the variable in the corresponding row is the dependent variable, and the time window in the corresponding column indicates the time span of the sample.
T215 26040-26321 Sentence denotes Each regression also includes 1- and 2-week lags of these weather variables, weekly averages of new infections in the preceding first and second weeks in Wuhan which are interacted with the inverse log distance or the population flow, and city, date and city by week fixed effects.
T216 26322-26425 Sentence denotes Coefficients on the instrumental variables for the full sample are reported in Table 15 in the appendix
T217 26426-26539 Sentence denotes We also need additional weather variables to instrument the adoption of public health measures at the city level.
T218 26540-26763 Sentence denotes Since there is no theoretical guidance from the existing literature, we implement the Cluster-Lasso method of Belloni et al. (2016) and Ahrens et al. (2019) to select weather characteristics that have good predictive power.
T219 26764-26800 Sentence denotes Details are displayed in Appendix A.
T220 26802-26809 Sentence denotes Results
T221 26810-26901 Sentence denotes Our sample starts from January 19, when the first COVID-19 case was reported outside Wuhan.
T222 26902-26960 Sentence denotes The sample spans 6 weeks in total and ends on February 29.
T223 26961-27147 Sentence denotes We divide the whole sample into two sub-samples (January 19 to February 1, and February 2 to February 29) and estimate the model using the whole sample and two sub-samples, respectively.
T224 27148-27352 Sentence denotes In the first 2 weeks, COVID-19 infections quickly spread throughout China with every province reporting at least one confirmed case, and the number of cases also increased at an increasing speed (Fig. 2).
T225 27353-27468 Sentence denotes It is also during these 2 weeks that the Chinese government took actions swiftly to curtail the virus transmission.
T226 27469-27604 Sentence denotes On January 20, COVID-19 was classified as a class B statutory infectious disease and treated as a class A statutory infectious disease.
T227 27605-27732 Sentence denotes The city of Wuhan was placed under lockdown on January 23; roads were closed, and residents were not allowed to leave the city.
T228 27733-27901 Sentence denotes Many other cities also imposed public policies ranging from canceling public events and stopping public transportation to limiting how often residents could leave home.
T229 27902-28040 Sentence denotes By comparing the dynamics of virus transmissions in these two sub-samples, we can infer the effectiveness of these public health measures.
T230 28041-28317 Sentence denotes In this section, we will mostly rely on model A to interpret the results, which estimates the effects of the average number of new cases in the preceding first and second week, respectively, and therefore enables us to examine the transmission dynamics at different time lags.
T231 28318-28420 Sentence denotes As a robustness check, we also consider a simpler lag structure to describe the transmission dynamics.
T232 28421-28556 Sentence denotes In model B, we estimate the effects of the average number of new cases in the past 14 days instead of using two separate lag variables.
T233 28558-28582 Sentence denotes Within-city transmission
T234 28583-28715 Sentence denotes Table 3 reports the estimation results of the OLS and IV regressions of Eq. 2, in which only within-city transmission is considered.
T235 28716-28929 Sentence denotes After controlling for time-invariant city fixed effects and time effects that are common to all cities, on average, one new infection leads to 1.142 more cases in the next week, but 0.824 fewer cases 1 week later.
T236 28930-29144 Sentence denotes The negative effect can be attributed to the fact that both local authorities and residents would have taken more protective measures in response to a higher perceived risk of contracting the virus given more time.
T237 29145-29386 Sentence denotes Information disclosure on newly confirmed cases at the daily level by official media and information dissemination on social media throughout China may have promoted more timely actions by the public, resulting in slower virus transmissions.
T238 29387-29452 Sentence denotes We then compare the transmission rates in different time windows.
T239 29453-29583 Sentence denotes In the first sub-sample, one new infection leads to 2.135 more cases within a week, implying a fast growth in the number of cases.
T240 29584-29770 Sentence denotes However, in the second sub-sample, the effect decreases to 1.077, suggesting that public health measures imposed in late January were effective in limiting a further spread of the virus.
T241 29771-29817 Sentence denotes Similar patterns are also observed in model B.
T242 29818-29862 Sentence denotes Table 3 Within-city transmission of COVID-19
T243 29863-29902 Sentence denotes Jan 19–Feb 29 Jan 19–Feb 1 Feb 2–Feb 29
T244 29903-29926 Sentence denotes (1) (2) (3) (4) (5) (6)
T245 29927-29947 Sentence denotes OLS IV OLS IV OLS IV
T246 29948-29974 Sentence denotes All cities excluding Wuhan
T247 29975-30065 Sentence denotes Model A: lagged variables are averages over the preceding first and second week separately
T248 30066-30142 Sentence denotes Average # of new cases 0.873*** 1.142*** 1.692*** 2.135*** 0.768*** 1.077***
T249 30143-30208 Sentence denotes 1-week lag (0.00949) (0.0345) (0.0312) (0.0549) (0.0120) (0.0203)
T250 30209-30292 Sentence denotes Average # of new cases − 0.415*** − 0.824*** 0.860 − 6.050*** − 0.408*** − 0.796***
T251 30293-30357 Sentence denotes 2-week lag (0.00993) (0.0432) (2.131) (2.314) (0.00695) (0.0546)
T252 30358-30423 Sentence denotes Model B: lagged variables are averages over the preceding 2 weeks
T253 30424-30499 Sentence denotes Average # of new case 0.474*** 0.720*** 3.310*** 3.860*** 0.494*** 1.284***
T254 30500-30567 Sentence denotes Previous 14 days (0.0327) (0.143) (0.223) (0.114) (0.00859) (0.107)
T255 30568-30614 Sentence denotes Observations 12,768 12,768 4256 4256 8512 8512
T256 30615-30655 Sentence denotes Number of cities 304 304 304 304 304 304
T257 30656-30696 Sentence denotes Weather controls Yes Yes Yes Yes Yes Yes
T258 30697-30728 Sentence denotes City FE Yes Yes Yes Yes Yes Yes
T259 30729-30760 Sentence denotes Date FE Yes Yes Yes Yes Yes Yes
T260 30761-30806 Sentence denotes All cities excluding cities in Hubei Province
T261 30807-30897 Sentence denotes Model A: lagged variables are averages over the preceding first and second week separately
T262 30898-30974 Sentence denotes Average # of new cases 0.725*** 1.113*** 1.050*** 1.483*** 0.620*** 0.903***
T263 30975-31036 Sentence denotes 1-week lag (0.141) (0.0802) (0.0828) (0.205) (0.166) (0.0349)
T264 31037-31117 Sentence denotes Average # of new cases − 0.394*** − 0.572*** 0.108 − 3.664 − 0.228*** − 0.341***
T265 31118-31178 Sentence denotes 2-week lag (0.0628) (0.107) (0.675) (2.481) (0.0456) (0.121)
T266 31179-31244 Sentence denotes Model B: lagged variables are averages over the preceding 2 weeks
T267 31245-31321 Sentence denotes Average # of new cases 0.357*** 0.631*** 1.899*** 2.376*** 0.493*** 0.745***
T268 31322-31387 Sentence denotes Previous 14 days (0.0479) (0.208) (0.250) (0.346) (0.122) (0.147)
T269 31388-31434 Sentence denotes Observations 12,096 12,096 4032 4032 8064 8064
T270 31435-31475 Sentence denotes Number of cities 288 288 288 288 288 288
T271 31476-31516 Sentence denotes Weather controls Yes Yes Yes Yes Yes Yes
T272 31517-31548 Sentence denotes City FE Yes Yes Yes Yes Yes Yes
T273 31549-31580 Sentence denotes Date FE Yes Yes Yes Yes Yes Yes
T274 31581-31637 Sentence denotes The dependent variable is the number of daily new cases.
T275 31638-31850 Sentence denotes The endogenous explanatory variables include the average numbers of new confirmed cases in the own city in the preceding first and second weeks (model A) and the average number in the preceding 14 days (model B).
T276 31851-32166 Sentence denotes Weekly averages of daily maximum temperature, precipitation, wind speed, the interaction between precipitation and wind speed, and the inverse log distance weighted sum of each of these variables in other cities, during the preceding third and fourth weeks, are used as instrumental variables in the IV regressions.
T277 32167-32266 Sentence denotes Weather controls include contemporaneous weather variables in the preceding first and second weeks.
T278 32267-32362 Sentence denotes Standard errors in parentheses are clustered by provinces. *** p < 0.01, ** p < 0.05, * p < 0.1
T279 32363-32516 Sentence denotes Many cases were also reported in other cities in Hubei province apart from Wuhan, where six of them reported over 1000 cumulative cases by February 1513.
T280 32517-32638 Sentence denotes Their overstretched health care system exacerbates the concern over delayed reporting of confirmed cases in these cities.
T281 32639-32775 Sentence denotes To mitigate the effect of such potential measurement errors on our estimates, we re-estimate (2) excluding all cities in Hubei province.
T282 32776-32828 Sentence denotes The bottom panel of Table 3 reports these estimates.
T283 32829-32985 Sentence denotes Comparing the IV estimates in columns (4) and (6) between the upper and lower panels, we find that the transmission rates are lower in cities outside Hubei.
T284 32986-33159 Sentence denotes In the January 19–February 1 sub-sample, one new case leads to 1.483 more cases in the following week, and this is reduced to 0.903 in the February 2–February 29 sub-sample.
T285 33160-33233 Sentence denotes We also find a similar pattern when comparing the estimates from model B.
T286 33235-33260 Sentence denotes Between-city transmission
T287 33261-33375 Sentence denotes People may contract the virus from interaction with the infected people who live in the same city or other cities.
T288 33376-33556 Sentence denotes In Eq. 1, we consider the effects of the number of new infections in other cities and in the epicenter of the epidemic (Wuhan), respectively, using inverse log distance as weights.
T289 33557-33802 Sentence denotes In addition, geographic proximity may not fully describe the level of social interactions between residents in Wuhan and other cities since the lockdown in Wuhan on January 23 significantly reduced the population flow from Wuhan to other cities.
T290 33803-34110 Sentence denotes To alleviate this concern, we also use a measure of the size of population flow from Wuhan to a destination city, which is constructed by multiplying the daily migration index on the population flow out of Wuhan (Fig 3) with the share of the flow that a destination city receives provided by Baidu (Fig. 4).
T291 34111-34211 Sentence denotes For days before January 25, we use the average destination shares between January 10 and January 24.
T292 34212-34320 Sentence denotes For days on or after January 24, we use the average destination shares between January 25 and February 2314.
T293 34321-34464 Sentence denotes Table 4 reports the estimates from IV regressions of Eq. 1, and Table 5 reports the results from the same regressions excluding Hubei province.
T294 34465-34651 Sentence denotes Column (4) of Table 4 indicates that in the first sub-sample, one new case leads to 2.456 more cases within 1 week, and the effect is not statistically significant between 1 and 2 weeks.
T295 34652-34827 Sentence denotes Column (6) suggests that in the second sub-sample, one new case leads to 1.127 more cases within 1 week, and the effect is not statistically significant between 1 and 2 weeks.
T296 34828-35028 Sentence denotes The comparison of the coefficients on own city between different sub-samples indicates that the responses of the government and the public have effectively decreased the risk of additional infections.
T297 35029-35324 Sentence denotes Comparing Table 4 with Table 3, we find that although the number of new cases in the preceding second week turns insignificant and smaller in magnitude, coefficients on the number of new cases in the preceding first week are not sensitive to the inclusion of terms on between-city transmissions.
T298 35325-35382 Sentence denotes Table 4 Within- and between-city rransmission of COVID-19
T299 35383-35422 Sentence denotes Jan 19–Feb 29 Jan 19–Feb 1 Feb 2–Feb 29
T300 35423-35446 Sentence denotes (1) (2) (3) (4) (5) (6)
T301 35447-35467 Sentence denotes OLS IV OLS IV OLS IV
T302 35468-35558 Sentence denotes Model A: lagged variables are averages over the preceding first and second week separately
T303 35559-35593 Sentence denotes Average # of new cases, 1-week lag
T304 35594-35656 Sentence denotes Own city 0.862*** 1.387*** 0.939*** 2.456*** 0.786*** 1.127***
T305 35657-35707 Sentence denotes (0.0123) (0.122) (0.102) (0.638) (0.0196) (0.0686)
T306 35708-35770 Sentence denotes Other cities 0.00266 − 0.0248 0.0889 0.0412 − 0.00316 − 0.0212
T307 35771-35843 Sentence denotes wt. = inv. dist. (0.00172) (0.0208) (0.0714) (0.0787) (0.00227) (0.0137)
T308 35844-35898 Sentence denotes Wuhan − 0.0141 0.0303 − 0.879 − 0.957 − 0.00788 0.0236
T309 35899-35968 Sentence denotes wt. = inv. dist. (0.0115) (0.0318) (0.745) (0.955) (0.00782) (0.0200)
T310 35969-36041 Sentence denotes Wuhan 3.74e-05 0.00151*** 0.00462*** 0.00471*** − 0.00211*** − 0.00238**
T311 36042-36122 Sentence denotes wt. = pop. flow (0.000163) (0.000391) (0.000326) (0.000696) (4.01e-05) (0.00113)
T312 36123-36157 Sentence denotes Average # of new cases, 2-week lag
T313 36158-36221 Sentence denotes Own city − 0.425*** − 0.795*** 2.558 − 1.633 − 0.205*** − 0.171
T314 36222-36272 Sentence denotes (0.0318) (0.0643) (2.350) (2.951) (0.0491) (0.224)
T315 36273-36345 Sentence denotes Other cities − 0.00451** − 0.00766 − 0.361 − 0.0404 − 0.00912** − 0.0230
T316 36346-36417 Sentence denotes wt. = inv. dist. (0.00213) (0.00814) (0.371) (0.496) (0.00426) (0.0194)
T317 36418-36471 Sentence denotes Wuhan − 0.0410* 0.0438 3.053 3.031 − 0.0603 − 0.00725
T318 36472-36540 Sentence denotes wt. = inv. dist. (0.0240) (0.0286) (2.834) (3.559) (0.0384) (0.0137)
T319 36541-36610 Sentence denotes Wuhan 0.00261*** 0.00333*** 0.00711*** − 0.00632 0.00167** 0.00368***
T320 36611-36690 Sentence denotes wt. = pop. flow (0.000290) (0.000165) (0.00213) (0.00741) (0.000626) (0.000576)
T321 36691-36756 Sentence denotes Model B: lagged variables are averages over the preceding 2 weeks
T322 36757-36819 Sentence denotes Own city 0.425*** 1.195*** 1.564*** 2.992*** 0.615*** 1.243***
T323 36820-36869 Sentence denotes (0.0771) (0.160) (0.174) (0.892) (0.0544) (0.115)
T324 36870-36941 Sentence denotes Other cities − 0.00901 − 0.0958** 0.0414 0.0704 − 0.0286*** − 0.0821***
T325 36942-37013 Sentence denotes wt. = inv. dist. (0.00641) (0.0428) (0.0305) (0.0523) (0.0101) (0.0246)
T326 37014-37072 Sentence denotes Wuhan − 0.198* − 0.0687** − 0.309 − 0.608 − 0.234* − 0.144
T327 37073-37139 Sentence denotes wt. = inv. dist. (0.104) (0.0268) (0.251) (0.460) (0.121) (0.0994)
T328 37140-37208 Sentence denotes Wuhan 0.00770*** 0.00487*** 0.00779*** 0.00316 0.00829*** 0.00772***
T329 37209-37289 Sentence denotes wt. = pop. flow (0.000121) (0.000706) (0.000518) (0.00276) (0.000367) (0.000517)
T330 37290-37336 Sentence denotes Observations 12,768 12,768 4256 4256 8512 8512
T331 37337-37377 Sentence denotes Number of cities 304 304 304 304 304 304
T332 37378-37418 Sentence denotes Weather controls Yes Yes Yes Yes Yes Yes
T333 37419-37450 Sentence denotes City FE Yes Yes Yes Yes Yes Yes
T334 37451-37482 Sentence denotes Date FE Yes Yes Yes Yes Yes Yes
T335 37483-37539 Sentence denotes The dependent variable is the number of daily new cases.
T336 37540-37760 Sentence denotes The endogenous explanatory variables include the average numbers of new confirmed cases in the own city and nearby cities in the preceding first and second weeks (model A) and averages in the preceding 14 days (model B).
T337 37761-38068 Sentence denotes Weekly averages of daily maximum temperature, precipitation, wind speed, the interaction between precipitation and wind speed, and the inverse log distance weighted sum of these variables in other cities, during the preceding third and fourth weeks, are used as instrumental variables in the IV regressions.
T338 38069-38168 Sentence denotes Weather controls include contemporaneous weather variables in the preceding first and second weeks.
T339 38169-38264 Sentence denotes Standard errors in parentheses are clustered by provinces. *** p < 0.01, ** p < 0.05, * p < 0.1
T340 38265-38358 Sentence denotes Table 5 Within- and between-city transmission of COVID-19, excluding cities in Hubei Province
T341 38359-38398 Sentence denotes Jan 19–Feb 29 Jan 19–Feb 1 Feb 2–Feb 29
T342 38399-38422 Sentence denotes (1) (2) (3) (4) (5) (6)
T343 38423-38443 Sentence denotes OLS IV OLS IV OLS IV
T344 38444-38534 Sentence denotes Model A: lagged variables are averages over the preceding first and second week separately
T345 38535-38569 Sentence denotes Average # of new cases, 1-week lag
T346 38570-38632 Sentence denotes Own city 0.656*** 1.117*** 0.792*** 1.194*** 0.567*** 0.899***
T347 38633-38682 Sentence denotes (0.153) (0.112) (0.0862) (0.302) (0.172) (0.0924)
T348 38683-38752 Sentence denotes Other cities 0.00114 − 0.00213 − 0.0160 − 0.0734 0.000221 − 0.00526**
T349 38753-38829 Sentence denotes wt. = inv. dist. (0.000741) (0.00367) (0.0212) (0.0803) (0.000626) (0.00244)
T350 38830-38885 Sentence denotes Wuhan − 0.000482 0.00420 0.104 0.233 5.89e-05 0.00769**
T351 38886-38958 Sentence denotes wt. = inv. dist. (0.00173) (0.00649) (0.128) (0.156) (0.00194) (0.00379)
T352 38959-39024 Sentence denotes Wuhan 0.00668*** 0.00616*** 0.00641*** 0.00375 − 0.000251 0.00390
T353 39025-39100 Sentence denotes wt. = pop. flow (0.00159) (0.00194) (0.00202) (0.00256) (0.00245) (0.00393)
T354 39101-39135 Sentence denotes Average # of new cases, 2-week lag
T355 39136-39200 Sentence denotes Own city − 0.350*** − 0.580*** 0.230 − 1.541 − 0.157** − 0.250**
T356 39201-39250 Sentence denotes (0.0667) (0.109) (0.572) (1.448) (0.0636) (0.119)
T357 39251-39315 Sentence denotes Other cities − 0.000869 0.00139 0.172 0.584 − 0.00266* − 0.00399
T358 39316-39388 Sentence denotes wt. = inv. dist. (0.00102) (0.00311) (0.122) (0.595) (0.00154) (0.00276)
T359 39389-39448 Sentence denotes Wuhan − 0.00461 0.000894 − 0.447 − 0.970 − 0.00456 0.00478*
T360 39449-39521 Sentence denotes wt. = inv. dist. (0.00304) (0.00592) (0.829) (0.808) (0.00368) (0.00280)
T361 39522-39587 Sentence denotes Wuhan 0.00803*** 0.00203 0.00973*** 0.00734 0.00759*** 0.00466***
T362 39588-39663 Sentence denotes wt. = pop. flow (0.00201) (0.00192) (0.00317) (0.00680) (0.00177) (0.00140)
T363 39664-39729 Sentence denotes Model B: lagged variables are averages over the preceding 2 weeks
T364 39730-39792 Sentence denotes Own city 0.242*** 0.654*** 1.407*** 1.876*** 0.406*** 0.614***
T365 39793-39841 Sentence denotes (0.0535) (0.195) (0.215) (0.376) (0.118) (0.129)
T366 39842-39908 Sentence denotes Other cities 0.000309 − 0.00315 0.00608 0.0194 − 0.00224 − 0.00568
T367 39909-39983 Sentence denotes wt. = inv. dist. (0.00142) (0.00745) (0.0188) (0.0300) (0.00204) (0.00529)
T368 39984-40048 Sentence denotes Wuhan − 0.0133** − 0.0167 − 0.0146 − 0.0362 − 0.0138** − 0.00847
T369 40049-40122 Sentence denotes wt. = inv. dist. (0.00535) (0.0140) (0.0902) (0.0741) (0.00563) (0.00787)
T370 40123-40187 Sentence denotes Wuhan 0.0153*** 0.0133*** 0.00826*** 0.00404 0.0132*** 0.0123***
T371 40188-40263 Sentence denotes wt. = pop. flow (0.00273) (0.00273) (0.00241) (0.00423) (0.00222) (0.00205)
T372 40264-40310 Sentence denotes Observations 12,096 12,096 4032 4032 8064 8064
T373 40311-40351 Sentence denotes Number of cities 288 288 288 288 288 288
T374 40352-40392 Sentence denotes Weather controls Yes Yes Yes Yes Yes Yes
T375 40393-40424 Sentence denotes City FE Yes Yes Yes Yes Yes Yes
T376 40425-40456 Sentence denotes Date FE Yes Yes Yes Yes Yes Yes
T377 40457-40513 Sentence denotes The dependent variable is the number of daily new cases.
T378 40514-40734 Sentence denotes The endogenous explanatory variables include the average numbers of new confirmed cases in the own city and nearby cities in the preceding first and second weeks (model A) and averages in the preceding 14 days (model B).
T379 40735-41042 Sentence denotes Weekly averages of daily maximum temperature, precipitation, wind speed, the interaction between precipitation and wind speed, and the inverse log distance weighted sum of these variables in other cities, during the preceding third and fourth weeks, are used as instrumental variables in the IV regressions.
T380 41043-41142 Sentence denotes Weather controls include contemporaneous weather variables in the preceding first and second weeks.
T381 41143-41238 Sentence denotes Standard errors in parentheses are clustered by provinces. *** p < 0.01, ** p < 0.05, * p < 0.1
T382 41239-41339 Sentence denotes As a robustness test, Table 5 reports the estimation results excluding the cities in Hubei province.
T383 41340-41546 Sentence denotes Column (4) of Table 5 indicates that in the first sub-sample, one new case leads to 1.194 more cases within a week, while in the second sub-sample, one new case only leads to 0.899 more cases within a week.
T384 41547-41815 Sentence denotes Besides, in the second subsample, one new case results in 0.250 fewer new infections between 1 and 2 weeks, which is larger in magnitude and more significant than the estimate (− 0.171) when cities in Hubei province are included for estimation (column (6) of Table 4).
T385 41816-41920 Sentence denotes The time varying patterns in local transmissions are evident using the rolling window analysis (Fig. 5).
T386 41921-42087 Sentence denotes The upper left panel displays the estimated coefficients on local transmissions for various 14-day sub-samples with the starting date labelled on the horizontal axis.
T387 42088-42234 Sentence denotes After a slight increase in the local transmission rates, one case generally leads to fewer and fewer additional cases a few days after January 19.
T388 42235-42460 Sentence denotes Besides, the transmission rate displays a slight increase beginning around February 4, which corresponds to the return travels and work resumption after Chinese Spring Festival, but eventually decreases at around February 12.
T389 42461-42615 Sentence denotes Such decrease may be partly attributed to the social distancing strategies at the city level, so we examine the impacts of relevant policies in Section 5.
T390 42616-42779 Sentence denotes Moreover, the transmission rates in cities outside Hubei province have been kept at low levels throughout the whole sample period (columns (4) and (6) of Table 5).
T391 42780-42960 Sentence denotes These results suggest that the policies adopted at the national and provincial levels soon after January 19 prevented cities outside Hubei from becoming new hotspots of infections.
T392 42961-43089 Sentence denotes Overall, the spread of the virus has been effectively contained by mid February, particularly for cities outside Hubei province.
T393 43090-43174 Sentence denotes Fig. 5 Rolling window analysis of within- and between-city transmission of COVID-19.
T394 43175-43275 Sentence denotes This figure shows the estimated coefficients and 95% CIs from the instrumental variable regressions.
T395 43276-43345 Sentence denotes The specification is the same as the IV regression models in Table 4.
T396 43346-43441 Sentence denotes Each estimation sample contains 14 days with the starting date indicated on the horizontal axis
T397 43442-43595 Sentence denotes In the epidemiology literature, the estimates on the basic reproduction number of COVID-19 are approximately within the wide range of 1.4∼6.5 (Liu et al.
T398 43596-43602 Sentence denotes 2020).
T399 43603-43917 Sentence denotes Its value depends on the estimation method used, underlying assumptions of modeling, time period covered, geographic regions (with varying preparedness of health care systems), and factors considered in the models that affect disease transmissions (such as the behavior of the susceptible and infected population).
T400 43918-44039 Sentence denotes Intuitively, it can be interpreted as measuring the expected number of new cases that are generated by one existing case.
T401 44040-44107 Sentence denotes It is of interest to note that our estimates are within this range.
T402 44108-44282 Sentence denotes Based on the results from model B in Tables 4 and 5, one case leads to 2.992 more cases in the same city in the next 14 days (1.876 if cities in Hubei province are excluded).
T403 44283-44541 Sentence denotes In the second sub-sample (February 2–February 29), these numbers are reduced to 1.243 and 0.614, respectively, suggesting that factors such as public health measures and people’s behavior may play an important role in containing the transmission of COVID-19.
T404 44542-44767 Sentence denotes While our basic reproduction number estimate (R0) is within the range of estimates in the literature and is close to its median, five features may distinguish our estimates from some of the existing epidemiological estimates.
T405 44768-45704 Sentence denotes First, our instrumental variable approach helps isolate the causal effect of virus transmissions from other confounded factors; second, our estimate is based on an extended time period of the COVID-19 pandemic (until the end of February 2020) that may mitigate potential biases in the literature that relies on a shorter sampling period within 1–28 January 2020; third, our modeling makes minimum assumptions of virus transmissions, such as imposing fewer restrictions on the relationship between the unobserved determinants of new cases and the number of cases in the past; fourth, our model simultaneously considers comprehensive factors that may affect virus transmissions, including multiple policy instruments (such as closed management of communities and shelter-at-home order), population flow, within- and between-city transmissions, economic and demographic conditions, weather patterns, and preparedness of health care system.
T406 45705-45893 Sentence denotes Fifth, our study uses spatially disaggregated data that cover China (except its Hubei province), while some other studies examine Wuhan city, Hubei province, China as a whole, or overseas.
T407 45894-46055 Sentence denotes Regarding the between-city transmission from Wuhan, we observe that the population flow better explains the contagion effect than geographic proximity (Table 4).
T408 46056-46196 Sentence denotes In the first sub-sample, one new case in Wuhan leads to more cases in other cities receiving more population flows from Wuhan within 1 week.
T409 46197-46503 Sentence denotes Interestingly, in the second sub-sample, population flow from Wuhan significantly decreases the transmission rate within 1 week, suggesting that people have been taking more cautious measures from high COVID-19 risk areas; however, more arrivals from Wuhan in the preceding second week can still be a risk.
T410 46504-46749 Sentence denotes A back of the envelope calculation indicates that one new case in Wuhan leads to 0.064 (0.050) more cases in the destination city per 10,000 travelers from Wuhan within 1 (2) week between January 19 and February 1 (February 2 and February 29)15.
T411 46750-46843 Sentence denotes Note that while the effect is statistically significant, it should be interpreted in context.
T412 46844-46946 Sentence denotes It was estimated that 15,000,000 people would travel out of Wuhan during the Lunar New Year holiday16.
T413 46947-47042 Sentence denotes If all had gone to one city, this would have directly generated about 171 cases within 2 weeks.
T414 47043-47321 Sentence denotes The risk of infection is likely very low for most travelers except for few who have previous contacts with sources of infection, and person-specific history of past contacts may be an essential predictor for infection risk, in addition to the total number of population flows17.
T415 47322-47414 Sentence denotes A city may also be affected by infections in nearby cities apart from spillovers from Wuhan.
T416 47415-47642 Sentence denotes We find that the coefficients that represent the infectious effects from nearby cities are generally small and not statistically significant (Table 4), implying that few cities outside Wuhan are themselves exporting infections.
T417 47643-47850 Sentence denotes This is consistent with the findings in the World Health Organization (2020b) that other than cases that are imported from Hubei, additional human-to-human transmissions are limited for cities outside Hubei.
T418 47851-48016 Sentence denotes Restricting to cities outside Hubei province, the results are similar (Table 5), except that the transmission from Wuhan is not significant in the first half sample.
T419 48018-48055 Sentence denotes Social and economic mediating factors
T420 48056-48184 Sentence denotes We also investigate the mediating impacts of some socioeconomic and environmental characteristics on the transmission rates (3).
T421 48185-48344 Sentence denotes To ease the comparison between different moderators, we consider the mediating impacts on the influence of the average number of new cases in the past 2 weeks.
T422 48345-48573 Sentence denotes Regarding own-city transmissions, we examine the mediating effects of population density, GDP per capita, number of doctors, and average temperature, wind speed, precipitation, and a dummy variable of adverse weather conditions.
T423 48574-48824 Sentence denotes Regarding between-city transmissions, we consider the mediating effects of distance, difference in population density, and difference in GDP per capita since cities that are similar in density or economic development level may be more closely linked.
T424 48825-48882 Sentence denotes We also include a measure of population flows from Wuhan.
T425 48883-48944 Sentence denotes Table 6 reports the estimation results of the IV regressions.
T426 48945-49257 Sentence denotes To ease the comparison across various moderators, for the mediating variables of within-city transmissions that are significant at 10%, we compute the changes in the variables so that the effect of new confirmed infections in the past 14 days on current new confirmed cases is reduced by 1 (columns (2) and (4)).
T427 49258-49332 Sentence denotes Table 6 Social and economic factors mediating the transmission of COVID-19
T428 49333-49348 Sentence denotes (1) (2) (3) (4)
T429 49349-49374 Sentence denotes Jan 19–Feb 1 Feb 2–Feb 29
T430 49375-49384 Sentence denotes IV Coeff.
T431 49385-49394 Sentence denotes IV Coeff.
T432 49395-49435 Sentence denotes Average # of new cases, previous 14 days
T433 49436-49461 Sentence denotes Own city − 0.251 0.672***
T434 49462-49477 Sentence denotes (0.977) (0.219)
T435 49478-49534 Sentence denotes × population density 0.000164 − 0.000202** + 495 per km2
T436 49535-49556 Sentence denotes (0.000171) (8.91e-05)
T437 49557-49603 Sentence denotes × per capita GDP 0.150*** − 66, 667 RMB 0.0102
T438 49604-49621 Sentence denotes (0.0422) (0.0196)
T439 49622-49662 Sentence denotes × # of doctors − 0.108* + 92, 593 0.0179
T440 49663-49680 Sentence denotes (0.0622) (0.0236)
T441 49681-49722 Sentence denotes × temperature 0.0849* − 11.78∘C − 0.00945
T442 49723-49740 Sentence denotes (0.0438) (0.0126)
T443 49741-49767 Sentence denotes × wind speed − 0.109 0.128
T444 49768-49783 Sentence denotes (0.131) (0.114)
T445 49784-49833 Sentence denotes × precipitation 0.965* − 1.04 mm 0.433* − 2.31 mm
T446 49834-49849 Sentence denotes (0.555) (0.229)
T447 49850-49892 Sentence denotes × adverse weather 0.0846 − 0.614*** + 163%
T448 49893-49908 Sentence denotes (0.801) (0.208)
T449 49909-49938 Sentence denotes Other cities 0.0356 − 0.00429
T450 49939-49977 Sentence denotes wt. = inv. distance (0.0375) (0.00343)
T451 49978-50007 Sentence denotes Other cities 0.00222 0.000192
T452 50008-50053 Sentence denotes wt. = inv. density ratio (0.00147) (0.000891)
T453 50054-50082 Sentence denotes Other cities 0.00232 0.00107
T454 50083-50134 Sentence denotes wt. = inv. per capita GDP ratio (0.00497) (0.00165)
T455 50135-50158 Sentence denotes Wuhan − 0.165 − 0.00377
T456 50159-50196 Sentence denotes wt. = inv. distance (0.150) (0.00981)
T457 50197-50223 Sentence denotes Wuhan − 0.00336 − 0.000849
T458 50224-50268 Sentence denotes wt. = inv. density ratio (0.00435) (0.00111)
T459 50269-50291 Sentence denotes Wuhan − 0.440 − 0.0696
T460 50292-50340 Sentence denotes wt. = inv. per capita GDP ratio (0.318) (0.0699)
T461 50341-50367 Sentence denotes Wuhan 0.00729*** 0.0125***
T462 50368-50409 Sentence denotes wt. = population flow (0.00202) (0.00187)
T463 50410-50432 Sentence denotes Observations 4032 8064
T464 50433-50457 Sentence denotes Number of cities 288 288
T465 50458-50482 Sentence denotes Weather controls Yes Yes
T466 50483-50498 Sentence denotes City FE Yes Yes
T467 50499-50514 Sentence denotes Date FE Yes Yes
T468 50515-50581 Sentence denotes The dependent variable is the number of daily new confirmed cases.
T469 50582-50627 Sentence denotes The sample excludes cities in Hubei province.
T470 50628-50879 Sentence denotes Columns (2) and (4) report the changes in the mediating variables that are needed to reduce the impact of new confirmed cases in the preceding 2 weeks by 1, using estimates with significance levels of at least 0.1 in columns (1) and (3), respectively.
T471 50880-51057 Sentence denotes The endogenous variables include the average numbers of new cases in the own city and nearby cities in the preceding 14 days and their interactions with the mediating variables.
T472 51058-51371 Sentence denotes Weekly averages of daily maximum temperature, precipitation, wind speed, the interaction between precipitation and wind speed, and the inverse log distance weighted sum of these variables in neighboring cities, during the preceding third and fourth weeks, are used as instrumental variables in the IV regressions.
T473 51372-51471 Sentence denotes Additional instrumental variables are constructed by interacting them with the mediating variables.
T474 51472-51553 Sentence denotes Weather controls include these variables in the preceding first and second weeks.
T475 51554-51611 Sentence denotes Standard errors in parentheses are clustered by provinces
T476 51612-51648 Sentence denotes *** p < 0.01, ** p < 0.05, * p < 0.1
T477 51649-51823 Sentence denotes In the early phase of the epidemic (January 19 to February 1), cities with more medical resources, which are measured by the number of doctors, have lower transmission rates.
T478 51824-51919 Sentence denotes One standard deviation increase in the number of doctors reduces the transmission rate by 0.12.
T479 51920-52079 Sentence denotes Cities with higher GDP per capita have higher transmission rates, which can be ascribed to the increased social interactions as economic activities increase18.
T480 52080-52226 Sentence denotes In the second sub-sample, these effects become insignificant probably because public health measures and inter-city resource sharing take effects.
T481 52227-52329 Sentence denotes In fact, cities with higher population density have lower transmission rates in the second sub-sample.
T482 52330-52459 Sentence denotes Regarding the environmental factors, we notice different significant mediating variables across the first and second sub-samples.
T483 52460-52558 Sentence denotes The transmission rates are lower with adverse weather conditions, lower temperature, or less rain.
T484 52559-52615 Sentence denotes Further research is needed to identify clear mechanisms.
T485 52616-52789 Sentence denotes In addition, population flow from Wuhan still poses a risk of new infections for other cities even after we account for the above mediating effects on own-city transmission.
T486 52790-52940 Sentence denotes This effect is robust to the inclusion of the proximity measures based on economic similarity and geographic proximity between Wuhan and other cities.
T487 52941-53044 Sentence denotes Nevertheless, we do not find much evidence on between-city transmissions among cities other than Wuhan.
T488 53046-53095 Sentence denotes Policy response to the COVID-19 outbreak in China
T489 53096-53288 Sentence denotes As the 2002–2004 SARS outbreak has shown, non-pharmaceutical interventions (NPIs) or public health measures may decrease or effectively stop the transmission of COVID-19 even without vaccines.
T490 53289-53469 Sentence denotes Although the effectiveness of a single intervention strategy can be limited, multiple interventions together may generate substantial impacts on containing the spread of the virus.
T491 53470-53604 Sentence denotes Figure 6 depicts the timeline for a series of policies enacted at the national, provincial, and city levels in China since January 19.
T492 53605-53779 Sentence denotes After the official confirmation of human-to-human transmission by the Chinese authorities on January 20, China has adopted a variety of NPIs to contain the COVID-19 outbreak.
T493 53780-53968 Sentence denotes At the national level, COVID-19 was classified as a statutory class B infectious disease on January 20, and prevention and control measures for class A infectious diseases have been taken.
T494 53969-54023 Sentence denotes Government agencies across the country were mobilized.
T495 54024-54204 Sentence denotes The Joint Prevention and Control Mechanism of the State Council was established on January 20, and the Central Leadership Group for Epidemic Response was established on January 25.
T496 54205-54451 Sentence denotes On January 23, National Healthcare Security Administration announced that expenses related to COVID-19 treatments would be covered by the medical insurance and the government if necessary, in order that all COVID-19 cases could be hospitalized19.
T497 54452-54640 Sentence denotes At the provincial level, 30 provinces declared level I responses to major public health emergencies from January 23 to 25, and all provinces had declared level I responses by January 2920.
T498 54641-54718 Sentence denotes Level I responses in China are designed for the highest state of emergencies.
T499 54719-54943 Sentence denotes Measures taken include enhanced isolation and contact tracing of cases, suspension of public transport, cancelling public events, closing schools and entertainment venues, and establishment of health checkpoints (Tian et al.
T500 54944-54950 Sentence denotes 2020).
T501 54951-55054 Sentence denotes These policies together represent population-wide social distancing and case isolation (Ferguson et al.
T502 55055-55061 Sentence denotes 2020).
T503 55062-55148 Sentence denotes Fig. 6 Timeline of China’s public health policies in curtailing the spread of COVID-19
T504 55150-55195 Sentence denotes Policy response to COVID-19 in Hubei Province
T505 55196-55374 Sentence denotes Early detection of COVID-19 importation and prevention of onward transmission are crucial to all areas at risk of importation from areas with active transmissions (Gilbert et al.
T506 55375-55381 Sentence denotes 2020).
T507 55382-55511 Sentence denotes To contain the virus at the epicenter, Wuhan was placed under lockdown with traffic ban for all residents starting on January 23.
T508 55512-55568 Sentence denotes The lockdown is not expected to be lifted until April 8.
T509 55569-55620 Sentence denotes Local buses, subways, and ferries ceased operation.
T510 55621-55730 Sentence denotes Ride-hailing services were prohibited, and only a limited number of taxis were allowed on road by January 24.
T511 55731-55777 Sentence denotes Residents are not permitted to leave the city.
T512 55778-55860 Sentence denotes Departure flights and trains were canceled at the city airport and train stations.
T513 55861-55944 Sentence denotes Checkpoints were set up at highway entrances to prevent cars from leaving the city.
T514 55945-56025 Sentence denotes Since January 22, it became mandatory to wear masks at work or in public places.
T515 56026-56211 Sentence denotes In addition, all cities in Hubei province implemented the lockdown policy, and most Hubei cities had also adopted measures commensurate with class A infectious diseases by January 2821.
T516 56212-56336 Sentence denotes Residents in those areas were strongly encouraged to stay at home and not to attend any activity involving public gathering.
T517 56337-56838 Sentence denotes Health facilities in Wuhan had been extremely overstretched with shortage in medical supplies and high rates of nosocomial infections until February 2 when (1) two new hospitals, i.e., Huoshenshan and Leishenshan, were built to treat patients of COVID-19 with severe symptoms, and (2) 14 makeshift health facilities were converted to isolate patients with mild symptoms and to quarantine people suspected of contracting COVID-19, patients with fever symptoms, and close contacts of confirmed patients.
T518 56839-56964 Sentence denotes This centralized treatment and isolation strategy since February 2 has substantially reduced transmission and incident cases.
T519 56965-57182 Sentence denotes However, stringent public health measures within Hubei province enforced after the massive lockdown may have little to do with virus transmissions out of Hubei province due to the complete travel ban since January 23.
T520 57184-57220 Sentence denotes Reducing inter-city population flows
T521 57221-57388 Sentence denotes Quarantine measures have been implemented in other provinces that aim at restricting population mobility across cities and reducing the risk of importing infections22.
T522 57389-57525 Sentence denotes Seven cities in Zhejiang, Henan, Heilongjiang, and Fujian provinces had adopted the partial shutdown strategy by February 4 (Fang et al.
T523 57526-57534 Sentence denotes 2020)23.
T524 57535-57641 Sentence denotes In Wenzhou, most public transportation was shut down, and traffic leaving the city was banned temporarily.
T525 57642-57823 Sentence denotes On January 21, the Ministry of Transport of China launched level 2 responses to emergencies in order to cooperate with the National Health Commission in preventing the virus spread.
T526 57824-58078 Sentence denotes On January 23, the Ministry of Transport of China, Civil Aviation Administration of China, and China State Railway Group Company, Ltd. (CSRGC) declared to waive the change fees for flight, train, bus, and ferry tickets that were bought before January 24.
T527 58079-58179 Sentence denotes Later, the CSRGC extended the fee waiver policy to train tickets that were bought before February 6.
T528 58180-58315 Sentence denotes By February 2, all railway stations in China had started to monitor body temperature of travelers when they enter and exit the station.
T529 58316-58598 Sentence denotes Across the whole country, Transportation Departments set up 14,000 health checkpoints at bus and ferry terminals, at service centers and toll gates on highways, monitoring the body temperature of passengers and controlling the inflow of population (World Health Organization 2020b).
T530 58599-58723 Sentence denotes Recent visitors to high COVID-19 risk areas are required to self-quarantine for 14 days at home or in designated facilities.
T531 58724-58870 Sentence denotes On February 2, China’s Exit and Entry Administration temporarily suspended the approval and issuance of the travel permits to Hong Kong and Macau.
T532 58871-58991 Sentence denotes On January 23, Wuhan Municipal Administration of Culture and Tourism ordered all tour groups to cancel travels to Wuhan.
T533 58992-59218 Sentence denotes On January 27, the Ministry of Education of China postponed start of the spring semester in 2020, and on February 7, it further announced that students were not allowed to return to school campus without approvals from school.
T534 59220-59270 Sentence denotes Encouraging social distancing in local communities
T535 59271-59412 Sentence denotes Recent studies suggest that there is a large proportion of asymptomatic or mild-symptomatic cases, who can also spread the virus (Dong et al.
T536 59413-59434 Sentence denotes 2020; Mizumoto et al.
T537 59435-59456 Sentence denotes 2020; Nishiura et al.
T538 59457-59474 Sentence denotes 2020; Wang et al.
T539 59475-59482 Sentence denotes 2020a).
T540 59483-59598 Sentence denotes Thus, maintaining social distance is of crucial importance in order to curtail the local transmission of the virus.
T541 59599-59781 Sentence denotes The period from January 24 to 31, 2020, is the traditional Chinese Spring Festival holiday, when families are supposed to get together so that inter-city travel is usually much less.
T542 59782-59929 Sentence denotes People were frequently reminded by official media (via TV news and phone messages) and social media to stay at home and avoid gathering activities.
T543 59930-60062 Sentence denotes On January 26, China State Council extended this holiday to February 2 to delay people’s return travel and curtail the virus spread.
T544 60063-60233 Sentence denotes Nevertheless, economic activities are still supposed to resume after the spring festival, bringing people back to workplaces, which may increase the risk of virus spread.
T545 60234-60525 Sentence denotes To help local residents keep social distance and decrease the risk of virus transmissions, many cities started to implement the “closed management of communities” and “family outdoor restrictions” policies since late January (Table 7), encouraging residents to restrict nonessential travels.
T546 60526-60982 Sentence denotes From January 28 to February 20, more than 250 prefecture-level cities in China implemented “closed management of communities,” which typically includes (1) keeping only one entrance for each community, (2) allowing only community residents to enter and exit the community, (3) checking body temperature for each entrant, (4) testing and quarantining cases that exhibit fever immediately, and (5) tracing and quarantining close contacts of suspicious cases.
T547 60983-61147 Sentence denotes Meanwhile, residents who had symptoms of fever or dry cough were required to report to the community and were quarantined and treated in special medical facilities.
T548 61148-61435 Sentence denotes Furthermore, local governments of 127 cities also imposed more stringent “family outdoor restrictions”—residents are confined or strongly encouraged to stay at home with limited exceptions, e.g., only one person in each family may go out for shopping for necessities once every 2 days24.
T549 61436-61553 Sentence denotes Exit permits were usually distributed to each family in advance and recollected when residents reenter the community.
T550 61554-61614 Sentence denotes Contacts of those patients were also traced and quarantined.
T551 61615-61771 Sentence denotes Table 7 summarizes the number of cities that had imposed “closed management of communities” or “family outdoor restrictions” by different dates in February.
T552 61772-61846 Sentence denotes Table 7 Number of cities with local quarantine measures by different dates
T553 61847-61912 Sentence denotes Date Closed management of communities Family outdoor restrictions
T554 61913-61928 Sentence denotes 2020-02-01 10 1
T555 61929-61944 Sentence denotes 2020-02-02 20 6
T556 61945-61961 Sentence denotes 2020-02-03 33 16
T557 61962-61978 Sentence denotes 2020-02-04 63 38
T558 61979-61996 Sentence denotes 2020-02-05 111 63
T559 61997-62014 Sentence denotes 2020-02-06 155 88
T560 62015-62032 Sentence denotes 2020-02-07 179 92
T561 62033-62050 Sentence denotes 2020-02-08 187 98
T562 62051-62069 Sentence denotes 2020-02-09 196 102
T563 62070-62088 Sentence denotes 2020-02-10 215 104
T564 62089-62107 Sentence denotes 2020-02-11 227 105
T565 62108-62126 Sentence denotes 2020-02-12 234 108
T566 62127-62145 Sentence denotes 2020-02-13 234 109
T567 62146-62164 Sentence denotes 2020-02-14 235 111
T568 62165-62183 Sentence denotes 2020-02-15 237 111
T569 62184-62202 Sentence denotes 2020-02-16 237 122
T570 62203-62221 Sentence denotes 2020-02-17 237 122
T571 62222-62240 Sentence denotes 2020-02-18 238 122
T572 62241-62259 Sentence denotes 2020-02-19 238 122
T573 62260-62279 Sentence denotes 2020-02-20‡ 241 123
T574 62280-62333 Sentence denotes ‡No new cities adopt these measures after February 20
T575 62334-62498 Sentence denotes In order to help inform evidence-based COVID-19 control measures, we examine the effect of these local quarantine measures in reducing the virus transmission rates.
T576 62499-62691 Sentence denotes Dummy variables for the presence of closed management of communities or family outdoor restrictions are created, and they are interacted with the number of infections in the preceding 2 weeks.
T577 62693-62754 Sentence denotes Assessment of the effects of non-pharmaceutical interventions
T578 62755-62821 Sentence denotes Several factors may contribute to the containment of the epidemic.
T579 62822-63017 Sentence denotes The transmission dynamics may change during the course of this epidemic because of improved medical treatments, more effective case isolation and contact tracing, increased public awareness, etc.
T580 63018-63159 Sentence denotes Therefore, we have split the sample into two sub-samples, and the estimated coefficients can be different across the sub-samples (Section 4).
T581 63160-63346 Sentence denotes NPIs such as closed management of communities, city lockdowns, and restrictions on population flow out of areas with high infection risks may also directly affect the transmission rates.
T582 63347-63680 Sentence denotes While many public health measures are implemented nationwide, spatial variations exist in the adoption of two types of measures: closed management of communities (denoted by closed management) and family outdoor restrictions (denoted by stay at home), which allow us to quantify the effect of these NPIs on the transmission dynamics.
T583 63681-63893 Sentence denotes Because most of these local NPIs are adopted in February and our earlier results indicate that the transmission of COVID-19 declines during late January, we restrict the analysis sample to February 2–February 29.
T584 63894-64153 Sentence denotes We also exclude cities in Hubei province, which modified the case definition related to clinically diagnosed cases on February 12 and changed the case definition related to reduced backlogs from increased capacity of molecular diagnostic tests on February 20.
T585 64154-64285 Sentence denotes These modifications coincide with the adoption of local NPIs and can significantly affect the observed dynamics of confirmed cases.
T586 64286-64425 Sentence denotes The adoption of closed management or stay at home is likely affected by the severity of the epidemic and correlated with the unobservables.
T587 64426-64591 Sentence denotes Additional weather controls that have a good predictive power for these NPIs are selected as the instrumental variables based on the method of Belloni et al. (2016).
T588 64592-64628 Sentence denotes Details are displayed in Appendix A.
T589 64629-64702 Sentence denotes The estimation results of OLS and IV regressions are reported in Table 8.
T590 64703-64760 Sentence denotes Table 8 Effects of local non-pharmaceutical interventions
T591 64761-64784 Sentence denotes (1) (2) (3) (4) (5) (6)
T592 64785-64805 Sentence denotes OLS IV OLS IV OLS IV
T593 64806-64840 Sentence denotes Average # of new cases, 1-week lag
T594 64841-64903 Sentence denotes Own city 0.642*** 0.780*** 0.684*** 0.805*** 0.654*** 0.805***
T595 64904-64957 Sentence denotes (0.0644) (0.0432) (0.0496) (0.0324) (0.0566) (0.0439)
T596 64958-65019 Sentence denotes × closed management − 0.593*** − 0.244*** − 0.547*** − 0.193*
T597 65020-65052 Sentence denotes (0.162) (0.0619) (0.135) (0.111)
T598 65053-65106 Sentence denotes × stay at home − 0.597*** − 0.278*** − 0.0688 − 0.110
T599 65107-65139 Sentence denotes (0.186) (0.0800) (0.121) (0.143)
T600 65140-65206 Sentence denotes Other cities 0.00121 − 0.00159 0.00167 − 0.00108 0.00129 − 0.00142
T601 65207-65285 Sentence denotes wt. = inv. dist. (0.000852) (0.00167) (0.00114) (0.00160) (0.000946) (0.00183)
T602 65286-65340 Sentence denotes Wuhan 0.00184 0.00382 0.00325* 0.00443 0.00211 0.00418
T603 65341-65417 Sentence denotes wt. = inv. dist. (0.00178) (0.00302) (0.00179) (0.00314) (0.00170) (0.00305)
T604 65418-65479 Sentence denotes Wuhan 0.00298 0.00110 − 0.00187 − 0.000887 0.00224 − 3.26e-07
T605 65480-65555 Sentence denotes wt. = pop. flow (0.00264) (0.00252) (0.00304) (0.00239) (0.00254) (0.00260)
T606 65556-65590 Sentence denotes Average # of new cases, 2-week lag
T607 65591-65649 Sentence denotes Own city 0.0345 − 0.0701 − 0.0103 − 0.0818 0.0396 − 0.0533
T608 65650-65703 Sentence denotes (0.0841) (0.0550) (0.0921) (0.0523) (0.0804) (0.0678)
T609 65704-65759 Sentence denotes × closed management − 0.367*** − 0.103 − 0.259** 0.0344
T610 65760-65792 Sentence denotes (0.0941) (0.136) (0.111) (0.222)
T611 65793-65843 Sentence denotes × stay at home − 0.294*** − 0.102 − 0.124* − 0.162
T612 65844-65877 Sentence denotes (0.0839) (0.136) (0.0720) (0.212)
T613 65878-65956 Sentence denotes Other cities − 0.00224 − 0.00412** − 0.00190 − 0.00381** − 0.00218 − 0.00397**
T614 65957-66033 Sentence denotes wt. = inv. dist. (0.00135) (0.00195) (0.00118) (0.00177) (0.00129) (0.00192)
T615 66034-66093 Sentence denotes Wuhan − 0.00512 0.00197 − 0.00445 0.00231 − 0.00483 0.00227
T616 66094-66170 Sentence denotes wt. = inv. dist. (0.00353) (0.00367) (0.00328) (0.00348) (0.00340) (0.00376)
T617 66171-66242 Sentence denotes Wuhan 0.00585*** 0.00554*** 0.00534*** 0.00523*** 0.00564*** 0.00516***
T618 66243-66319 Sentence denotes wt. = pop. flow (0.00110) (0.000929) (0.00112) (0.00104) (0.00109) (0.00116)
T619 66320-66362 Sentence denotes Observations 8064 8064 8064 8064 8064 8064
T620 66363-66403 Sentence denotes Number of cities 288 288 288 288 288 288
T621 66404-66444 Sentence denotes Weather controls Yes Yes Yes Yes Yes Yes
T622 66445-66476 Sentence denotes City FE Yes Yes Yes Yes Yes Yes
T623 66477-66508 Sentence denotes Date FE Yes Yes Yes Yes Yes Yes
T624 66509-66590 Sentence denotes The sample is from February 2 to February 29, excluding cities in Hubei province.
T625 66591-66657 Sentence denotes The dependent variable is the number of daily new confirmed cases.
T626 66658-66947 Sentence denotes The instrumental variables include weekly averages of daily maximum temperature, wind speed, precipitation, and the interaction between wind speed and precipitation, in the preceding third and fourth weeks, and the inverse log distance weighted averages of these variables in other cities.
T627 66948-67159 Sentence denotes Additional instrumental variables are constructed by interacting these excluded instruments with variables that predict the adoption of closed management of communities or family outdoor restrictions (Table 10).
T628 67160-67253 Sentence denotes The weather controls include weather characteristics in the preceding first and second weeks.
T629 67254-67349 Sentence denotes Standard errors in parentheses are clustered by provinces. *** p < 0.01, ** p < 0.05, * p < 0.1
T630 67350-67444 Sentence denotes We find that closed management and stay at home significantly decrease the transmission rates.
T631 67445-67591 Sentence denotes As a result of closed management of communities, one infection will generate 0.244 (95% CI, −0.366∼−0.123) fewer new infections in the first week.
T632 67592-67676 Sentence denotes The effect in the second week is also negative though not statistically significant.
T633 67677-67881 Sentence denotes Family outdoor restrictions (stay at home) are more restrictive than closing communities to visitors and reduce additional infections from one infection by 0.278 (95% CI, −0.435∼−0.121) in the first week.
T634 67882-67945 Sentence denotes The effect in the second week is not statistically significant.
T635 67946-68111 Sentence denotes To interpret the magnitude of the effect, it is noted that the reproduction number of SARS-CoV-2 is estimated to be around 1.4∼6.5 as of January 28, 2020 (Liu et al.
T636 68112-68118 Sentence denotes 2020).
T637 68119-68155 Sentence denotes Many cities implement both policies.
T638 68156-68319 Sentence denotes However, it is not conclusive to ascertain the effect of further imposing family outdoor restrictions in cities that have adopted closed management of communities.
T639 68320-68695 Sentence denotes When both policies are included in the model, the OLS coefficients (column (5)) indicate that closed management reduces the transmission rate by 0.547 (95% CI, −0.824∼−0.270) in the first week, and by 0.259 (95% CI, −0.485∼−0.032) in the second week, while the additional benefit from stay at home is marginally significant in the second week (− 0.124, 95% CI, −0.272∼0.023).
T640 68696-68928 Sentence denotes The IV estimates indicate that closed management reduces the transmission rate in the first week by 0.193 (95% CI, −0.411∼0.025), while the effect in the second week and the effects of stay at home are not statistically significant.
T641 68929-69146 Sentence denotes Additional research that examines the decision process of health authorities or documents the local differences in the actual implementation of the policies may offer insights into the relative merits of the policies.
T642 69147-69236 Sentence denotes We further assess the effects of NPIs by conducting a series of counterfactual exercises.
T643 69237-69291 Sentence denotes After estimating (3) by 2SLS, we obtain the residuals.
T644 69292-69503 Sentence denotes Then, the changes in yct are predicted for counterfactual changes in the transmission dynamics (i.e., coefficients αwithin,τk) and the impositions of NPIs (i.e., h¯ctkτ, and the lockdown of Wuhan m¯c,Wuhan,tkτ).
T645 69504-69580 Sentence denotes In scenario A, no cities adopted family outdoor restrictions (stay at home).
T646 69581-69662 Sentence denotes Similarly, in scenario B, no cities implemented closed management of communities.
T647 69663-69793 Sentence denotes We use the estimates in columns (2) and (4) of Table 8 to conduct the counterfactual analyses for scenarios A and B, respectively.
T648 69794-70054 Sentence denotes In scenario C, we assume that the index of population flows out of Wuhan after the Wuhan lockdown (January 23) took the value that was observed in 2019 for the same lunar calendar date (Fig. 3), which would be plausible had there been no lockdown around Wuhan.
T649 70055-70194 Sentence denotes It is also likely that in the absence of lockdown but with the epidemic, more people would leave Wuhan compared with last year (Fang et al.
T650 70195-70238 Sentence denotes 2020), and the effect would then be larger.
T651 70239-70662 Sentence denotes In scenario D, we assume that the within-city transmission dynamics were the same as those observed between January 19 and February 1, i.e., the coefficient of 1-week lag own-city infections was 2.456 and the coefficient of 2-week lag own-city infections was − 1.633 (column (4) of Table 4), which may happen if the transmission rates in cities outside Hubei increased in the same way as those observed for cities in Hubei.
T652 70663-70743 Sentence denotes Appendix C contains the technical details on the computation of counterfactuals.
T653 70744-70916 Sentence denotes In Fig. 7, we report the differences between the predicted number of daily new cases in the counterfactual scenarios and the actual data, for cities outside Hubei province.
T654 70917-71032 Sentence denotes We also report the predicted cumulative effect in each scenario at the bottom of the corresponding panel in Fig. 7.
T655 71033-71235 Sentence denotes Had the transmission rates in cities outside Hubei province increased to the level observed in late January, by February 29, there would be 1,408,479 (95% CI, 815,585∼2,001,373) more cases (scenario D).
T656 71236-71302 Sentence denotes Assuming a fatality rate of 4%, there would be 56,339 more deaths.
T657 71303-71390 Sentence denotes The magnitude of the effect from Wuhan lockdown and local NPIs is considerably smaller.
T658 71391-71534 Sentence denotes As a result of Wuhan lockdown, 31,071 (95% CI, 8296∼53,845) fewer cases would be reported for cities outside Hubei by February 29 (scenario C).
T659 71535-71773 Sentence denotes Closed management of communities and family outdoor restrictions would reduce the number of cases by 3803 (95% CI, 1142∼6465; or 15.78 per city with the policy) and 2703 (95% CI, 654∼4751; or 21.98 per city with the policy), respectively.
T660 71774-71964 Sentence denotes These estimates, combined with additional assumptions on the value of statistical life, lost time from work, etc., may contribute to cost-benefit analyses of relevant public health measures.
T661 71965-72006 Sentence denotes Fig. 7 Counterfactual policy simulations.
T662 72007-72233 Sentence denotes This figure displays the daily differences between the total predicted number and the actual number of daily new COVID-19 cases for each of the four counterfactual scenarios for cities outside Hubei province in mainland China.
T663 72234-72419 Sentence denotes The spike on February 12 in scenario C is due to a sharp increase in daily case counts in Wuhan resulting from changes in case definitions in Hubei province (see Appendix B for details)
T664 72420-72670 Sentence denotes Our counterfactual simulations indicate that suppressing local virus transmissions so that transmission rates are kept well below those observed in Hubei in late January is crucial in forestalling large numbers of infections for cities outside Hubei.
T665 72671-72780 Sentence denotes Our retrospective analysis of the data from China complements the simulation study of Ferguson et al. (2020).
T666 72781-72919 Sentence denotes Our estimates indicate that suppressing local transmission rates at low levels might have avoided one million or more infections in China.
T667 72920-73043 Sentence denotes Chinazzi et al. (2020) also find that reducing local transmission rates is necessary for effective containment of COVID-19.
T668 73044-73202 Sentence denotes The public health policies announced by the national and provincial authorities in the last 2 weeks in January may have played a determinant role (Tian et al.
T669 73203-73315 Sentence denotes 2020) in keeping local transmission rates in cities outside Hubei at low levels throughout January and February.
T670 73316-73599 Sentence denotes Among the measures implemented following provincial level I responses, Shen et al. (2020) highlight the importance of contact tracing and isolation of close contacts before onset of symptoms in preventing a resurgence of infections once the COVID-19 suppression measures are relaxed.
T671 73600-73807 Sentence denotes We also find that travel restrictions on high-risk areas (the lockdown in Wuhan), and to a lesser extent, closed management of communities and family outdoor restrictions, further reduce the number of cases.
T672 73808-73876 Sentence denotes It should be noted that these factors may overlap in the real world.
T673 73877-74047 Sentence denotes In the absence of the lockdown in Wuhan, the health care systems in cities outside Hubei could face much more pressure, and local transmissions may have been much higher.
T674 74048-74145 Sentence denotes In China, the arrival of the COVID-19 epidemic coincided with the Lunar New Year for many cities.
T675 74146-74258 Sentence denotes Had the outbreak started at a different time, the effects and costs of these policies would likely be different.
T676 74260-74270 Sentence denotes Conclusion
T677 74271-74415 Sentence denotes This paper examines the transmission dynamics of the coronavirus disease 2019 in China, considering both within- and between-city transmissions.
T678 74416-74646 Sentence denotes Our sample is from January 19 to February 29 and covers key episodes such as the initial spread of the virus across China, the peak of infections in terms of domestic case counts, and the gradual containment of the virus in China.
T679 74647-74807 Sentence denotes Changes in weather conditions induce exogenous variations in past infection rates, which allow us to identify the causal impact of past infections on new cases.
T680 74808-74969 Sentence denotes The estimates suggest that the infectious effect of the existing cases is mostly observed within 1 week and people’s responses can break the chain of infections.
T681 74970-75142 Sentence denotes Comparing estimates in two sub-samples, we observe that the spread of COVID-19 has been effectively contained by mid February, especially for cities outside Hubei province.
T682 75143-75231 Sentence denotes Data on real-time population flows between cities have become available in recent years.
T683 75232-75420 Sentence denotes We show that this new source of data is valuable in explaining between-city transmissions of COVID-19, even after controlling for traditional measures of geographic and economic proximity.
T684 75421-75560 Sentence denotes By April 5 of 2020, COVID-19 infections have been reported in more than 200 countries or territories and more than 64,700 people have died.
T685 75561-75667 Sentence denotes Behind the grim statistics, more and more national and local governments are implementing countermeasures.
T686 75668-75761 Sentence denotes Cross border travel restrictions are imposed in order to reduce the risk of case importation.
T687 75762-75916 Sentence denotes In areas with risks of community transmissions, public health measures such as social distancing, mandatory quarantine, and city lockdown are implemented.
T688 75917-76194 Sentence denotes In a series of counterfactual simulations, we find that based on the experience in China, preventing sustained community transmissions from taking hold in the first place has the largest impact, followed by restricting population flows from areas with high risks of infections.
T689 76195-76341 Sentence denotes Local public health measures such as closed management of communities and family outdoor restrictions can further reduce the number of infections.
T690 76342-76634 Sentence denotes A key limitation of the paper is that we are not able to disentangle the effects from each of the stringent measures taken, as within this 6-week sampling period, China enforced such a large number of densely timed policies to contain the virus spreading, often simultaneously in many cities.
T691 76635-76983 Sentence denotes A second limitation is that shortly after the starting date of the official data release for confirmed infected cases throughout China, i.e., January 19, 2020, many stringent measures were implemented, which prevents researchers to compare the post treatment sub-sample with a pre treatment sub-sample during which no strict policies were enforced.
T692 76984-77178 Sentence denotes Key knowledge gaps remain in the understanding of the epidemiological characteristics of COVID-19, such as individual risk factors for contracting the virus and infections from asymptotic cases.
T693 77179-77325 Sentence denotes Data on the demographics and exposure history for those who have shown symptoms as well as those who have not will help facilitate these research.

LitCovid-PubTator

Id Subject Object Predicate Lexical cue tao:has_database_id
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331 56725-56731 Species denotes people Tax:9606
332 56767-56775 Species denotes patients Tax:9606
333 56829-56837 Species denotes patients Tax:9606
334 56522-56533 Chemical denotes Huoshenshan
335 56538-56549 Chemical denotes Leishenshan
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341 58623-58631 Disease denotes COVID-19 MESH:C000657245
345 59782-59788 Species denotes People Tax:9606
346 60010-60016 Species denotes people Tax:9606
347 60162-60168 Species denotes people Tax:9606
352 61572-61580 Species denotes patients Tax:9606
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358 62373-62381 Disease denotes COVID-19 MESH:C000657245
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361 63277-63291 Disease denotes high infection MESH:D007239
363 63796-63804 Disease denotes COVID-19 MESH:C000657245
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418 75543-75549 Species denotes people Tax:9606
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429 77145-77155 Disease denotes infections MESH:D007239

2_test

Id Subject Object Predicate Lexical cue
32395017-31978945-64435791 405-409 31978945 denotes 2020
32395017-24789791-64435792 3944-3948 24789791 denotes 2014
32395017-31209042-64435793 6541-6545 31209042 denotes 2019
32395017-19619909-64435794 6772-6776 19619909 denotes 2009
32395017-31097347-64435795 7037-7041 31097347 denotes 2019
32395017-19278744-64435796 7169-7173 19278744 denotes 2009
32395017-24789791-64435797 23255-23259 24789791 denotes 2014