The BioGRID interaction database: 2017 update

Andrew Chatr‐aryamontri(Institute for Research in Immunology and Cancer), Rose Oughtred(Princeton University), Lorrie Boucher(Lunenfeld-Tanenbaum Research Institute), Jennifer Rust(Princeton University), Christie Chang(Princeton University), Nadine K. Kolas(Mount Sinai Hospital), Lara O’Donnell(Lunenfeld-Tanenbaum Research Institute), Sara Oster(Mount Sinai Hospital), Chandra L. Theesfeld(Princeton University), Adnane Sellam(Centre hospitalier de l'Université Laval), Chris Stark(Mount Sinai Hospital), Bobby‐Joe Breitkreutz(Mount Sinai Hospital), Kara Dolinski(Princeton University), Mike Tyers(Université de Montréal)
Nucleic Acids Research
October 27, 2016
Cited by 1,021Open Access
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Abstract

The Biological General Repository for Interaction Datasets (BioGRID: https://thebiogrid.org) is an open access database dedicated to the annotation and archival of protein, genetic and chemical interactions for all major model organism species and humans. As of September 2016 (build 3.4.140), the BioGRID contains 1 072 173 genetic and protein interactions, and 38 559 post-translational modifications, as manually annotated from 48 114 publications. This dataset represents interaction records for 66 model organisms and represents a 30% increase compared to the previous 2015 BioGRID update. BioGRID curates the biomedical literature for major model organism species, including humans, with a recent emphasis on central biological processes and specific human diseases. To facilitate network-based approaches to drug discovery, BioGRID now incorporates 27 501 chemical-protein interactions for human drug targets, as drawn from the DrugBank database. A new dynamic interaction network viewer allows the easy navigation and filtering of all genetic and protein interaction data, as well as for bioactive compounds and their established targets. BioGRID data are directly downloadable without restriction in a variety of standardized formats and are freely distributed through partner model organism databases and meta-databases.


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