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NameTDescription# Ann. AuthorMaintainerUpdated_atStatus

241-260 / 592 show all
LitCoin_Mondo 1.96 KYasunori Yamamoto2023-11-28Testing
updated_tagging_age_PMA_annotations 1.94 Klaurenc2023-11-26Developing
LitCovid-sample-PD-FMA 1.93 KJin-Dong Kim2023-11-28Beta
AnEM_abstracts 250 documents selected randomly from citation abstracts Entity types: organism subdivision, anatomical system, organ, multi-tissue structure, tissue, cell, developing anatomical structure, cellular component, organism substance, immaterial anatomical entity and pathological formation Together with AnEM_full-texts, it is probably the largest manually annotated corpus on anatomical entities.1.91 KNaCTeMYue Wang2023-11-29Released
Age_blah 1.9 Kslee72682023-11-29Beta
bionlp-ost-19-BB-kb-ner-dev 1.9 Kldeleger2023-11-29Developing
bionlp-ost-19-BB-kb-dev 1.89 Kldeleger2023-11-26Developing
GlyCosmos600-CLO 1.73 KJin-Dong Kim2023-11-28Testing
consensus_PMA_Age_Indications 1.7 Klaurenc2023-11-28Beta
LitCoin-NCBITaxon-2 1.65 Katsuko2023-11-29Testing
ICD10 Annotation for disease names as defined in ICD101.6 KDBCLSJin-Dong Kim2023-11-29Developing
PMA_age_indications 1.57 Ktherightstef2023-11-29Developing
parkinson parkinson's disease 1.55 KKyungeunKyungeun2023-11-29Testing
CoMAGC In order to access the large amount of information in biomedical literature about genes implicated in various cancers both efficiently and accurately, the aid of text mining (TM) systems is invaluable. Current TM systems do target either gene-cancer relations or biological processes involving genes and cancers, but the former type produces information not comprehensive enough to explain how a gene affects a cancer, and the latter does not provide a concise summary of gene-cancer relations. In order to support the development of TM systems that are specifically targeting gene-cancer relations but are still able to capture complex information in biomedical sentences, we publish CoMAGC, a corpus with multi- faceted annotations of gene-cancer relations. In CoMAGC, a piece of annotation is composed of four semantically orthogonal concepts that together express 1) how a gene changes, 2) how a cancer changes and 3) the causality between the gene and the cancer. The multi-faceted annotations are shown to have high inter-annotator agreement. In addition, the annotations in CoMAGC allow us to infer the prospective roles of genes in cancers and to classify the genes into three classes according to the inferred roles. We encode the mapping between multi-faceted annotations and gene classes into 10 inference rules. The inference rules produce results with high accuracy as measured against human annotations. CoMAGC consists of 821 sentences on prostate, breast and ovarian cancers. Currently, the corpus deals with changes in gene expression levels among other types of gene changes.1.53 KLee et alHee-Jin Lee2023-11-24Released
funRiceGenes-all 1.51 KPubDictionariesYue Wang2023-11-29Developing
Grays_part1 Embryology1.44 Kokubo2023-11-30Testing
LitCovid-sample-CHEBI 1.44 KJin-Dong Kim2023-11-29Testing
tmVarCorpus Wei C-H, Harris BR, Kao H-Y, Lu Z (2013) tmVar: A text mining approach for extracting sequence variants in biomedical literature, Bioinformatics, 29(11) 1433-1439, doi:10.1093/bioinformatics/btt156.1.43 KChih-Hsuan Wei , Bethany R. Harris , Hung-Yu Kao and Zhiyong LuChih-Hsuan Wei2023-11-24Released
LitCovid-sample-PD-NCBITaxon 1.35 KJin-Dong Kim2023-11-29Beta
BLAH2015_Annotations_test_5 1.34 Knestoralvaronestoralvaro2023-11-30Testing
NameT# Ann. AuthorMaintainerUpdated_atStatus

241-260 / 592 show all
LitCoin_Mondo 1.96 KYasunori Yamamoto2023-11-28Testing
updated_tagging_age_PMA_annotations 1.94 Klaurenc2023-11-26Developing
LitCovid-sample-PD-FMA 1.93 KJin-Dong Kim2023-11-28Beta
AnEM_abstracts 1.91 KNaCTeMYue Wang2023-11-29Released
Age_blah 1.9 Kslee72682023-11-29Beta
bionlp-ost-19-BB-kb-ner-dev 1.9 Kldeleger2023-11-29Developing
bionlp-ost-19-BB-kb-dev 1.89 Kldeleger2023-11-26Developing
GlyCosmos600-CLO 1.73 KJin-Dong Kim2023-11-28Testing
consensus_PMA_Age_Indications 1.7 Klaurenc2023-11-28Beta
LitCoin-NCBITaxon-2 1.65 Katsuko2023-11-29Testing
ICD10 1.6 KDBCLSJin-Dong Kim2023-11-29Developing
PMA_age_indications 1.57 Ktherightstef2023-11-29Developing
parkinson 1.55 KKyungeunKyungeun2023-11-29Testing
CoMAGC 1.53 KLee et alHee-Jin Lee2023-11-24Released
funRiceGenes-all 1.51 KPubDictionariesYue Wang2023-11-29Developing
Grays_part1 1.44 Kokubo2023-11-30Testing
LitCovid-sample-CHEBI 1.44 KJin-Dong Kim2023-11-29Testing
tmVarCorpus 1.43 KChih-Hsuan Wei , Bethany R. Harris , Hung-Yu Kao and Zhiyong LuChih-Hsuan Wei2023-11-24Released
LitCovid-sample-PD-NCBITaxon 1.35 KJin-Dong Kim2023-11-29Beta
BLAH2015_Annotations_test_5 1.34 Knestoralvaronestoralvaro2023-11-30Testing