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《疾病本体论2015年更新:一个通过疾病数据连接生物医学知识的经过扩展和更新的人类疾病数据库》

Disease Ontology 2015 update: an expanded and updated database of human diseases for linking biomedical knowledge through disease data.

作者信息

Kibbe Warren A, Arze Cesar, Felix Victor, Mitraka Elvira, Bolton Evan, Fu Gang, Mungall Christopher J, Binder Janos X, Malone James, Vasant Drashtti, Parkinson Helen, Schriml Lynn M

机构信息

Center for Biomedical Informatics and Information Technology, National Cancer Institute, 9609 Medical Center Drive, Rockville, MD 20850, USA.

Institute for Genome Sciences, University of Maryland School of Medicine, Baltimore, MD 21201, USA.

出版信息

Nucleic Acids Res. 2015 Jan;43(Database issue):D1071-8. doi: 10.1093/nar/gku1011. Epub 2014 Oct 27.

Abstract

The current version of the Human Disease Ontology (DO) (http://www.disease-ontology.org) database expands the utility of the ontology for the examination and comparison of genetic variation, phenotype, protein, drug and epitope data through the lens of human disease. DO is a biomedical resource of standardized common and rare disease concepts with stable identifiers organized by disease etiology. The content of DO has had 192 revisions since 2012, including the addition of 760 terms. Thirty-two percent of all terms now include definitions. DO has expanded the number and diversity of research communities and community members by 50+ during the past two years. These community members actively submit term requests, coordinate biomedical resource disease representation and provide expert curation guidance. Since the DO 2012 NAR paper, there have been hundreds of term requests and a steady increase in the number of DO listserv members, twitter followers and DO website usage. DO is moving to a multi-editor model utilizing Protégé to curate DO in web ontology language. This will enable closer collaboration with the Human Phenotype Ontology, EBI's Ontology Working Group, Mouse Genome Informatics and the Monarch Initiative among others, and enhance DO's current asserted view and multiple inferred views through reasoning.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bf83/4383880/19bbdd8ea628/gku1011fig1.jpg

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