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PMC:7116472 / 24302-25507 JSONTXT

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LitCovid-PubTator

Id Subject Object Predicate Lexical cue tao:has_database_id
345 132-140 Species denotes patients Tax:9606
346 205-212 Species denotes patient Tax:9606
347 383-391 Species denotes patients Tax:9606
348 73-82 Disease denotes Mortality MESH:D003643
349 167-175 Disease denotes covid-19 MESH:C000657245
350 184-193 Disease denotes Mortality MESH:D003643
351 408-413 Disease denotes death MESH:D003643
353 1086-1095 Disease denotes Mortality MESH:D003643

LitCovid-sentences

Id Subject Object Predicate Lexical cue
T160 0-18 Sentence denotes Principal findings
T161 19-176 Sentence denotes We have developed and validated the eight variable 4C Mortality Score in a UK prospective cohort study of 57 824 patients admitted to hospital with covid-19.
T162 177-426 Sentence denotes The 4C Mortality Score uses patient demographics, clinical observations, and blood parameters that are commonly available at the time of hospital admission and can accurately characterise the population of patients at high risk of death in hospital.
T163 427-655 Sentence denotes The score compared favourably with other models, including best-in-class machine learning techniques, and showed consistent performance across the validation cohorts, including good clinical utility in a decision curve analysis.
T164 656-785 Sentence denotes Model performance compared well against other generated models, with minimal loss in discrimination despite its pragmatic nature.
T165 786-1078 Sentence denotes A machine learning approach showed a marginal improvement in discrimination, but at the cost of interpretability, the requirement for many more input variables, and the need for an app or website calculator that might limit use at the bedside given personal protective equipment requirements.
T166 1079-1205 Sentence denotes The 4C Mortality Score showed good applicability within the validation cohort and consistency across all performance measures.