| Literature DB >> 26138794 |
Gregory F Cooper1, Ivet Bahar2, Michael J Becich3, Panayiotis V Benos2, Jeremy Berg4, Jeremy U Espino3, Clark Glymour5, Rebecca Crowley Jacobson3, Michelle Kienholz6, Adrian V Lee7, Xinghua Lu3, Richard Scheines8.
Abstract
The Big Data to Knowledge (BD2K) Center for Causal Discovery is developing and disseminating an integrated set of open source tools that support causal modeling and discovery of biomedical knowledge from large and complex biomedical datasets. The Center integrates teams of biomedical and data scientists focused on the refinement of existing and the development of new constraint-based and Bayesian algorithms based on causal Bayesian networks, the optimization of software for efficient operation in a supercomputing environment, and the testing of algorithms and software developed using real data from 3 representative driving biomedical projects: cancer driver mutations, lung disease, and the functional connectome of the human brain. Associated training activities provide both biomedical and data scientists with the knowledge and skills needed to apply and extend these tools. Collaborative activities with the BD2K Consortium further advance causal discovery tools and integrate tools and resources developed by other centers.Entities:
Keywords: Big Data to knowledge (BD2K); biomedical knowledge; biomedical science; causal discovery; center of excellence
Mesh:
Year: 2015 PMID: 26138794 PMCID: PMC5009908 DOI: 10.1093/jamia/ocv059
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497