PARADIGM-SHIFT predicts the function of mutations in multiple cancers using pathway impact analysis

Sam Ng(University of California, Santa Cruz), Eric A. Collisson(University of California, San Francisco), Artem Sokolov(University of California, Santa Cruz), Theodore C. Goldstein(University of California, Santa Cruz), Abel González-Pérez(Barcelona Biomedical Research Park), Núria López-Bigas(Institució Catalana de Recerca i Estudis Avançats), Christopher C. Benz(Buck Institute for Research on Aging), David Haussler(Howard Hughes Medical Institute), Joshua M. Stuart(University of California, Santa Cruz)
Bioinformatics
September 3, 2012
Cited by 108Open Access
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Abstract

MOTIVATION: A current challenge in understanding cancer processes is to pinpoint which mutations influence the onset and progression of disease. Toward this goal, we describe a method called PARADIGM-SHIFT that can predict whether a mutational event is neutral, gain-or loss-of-function in a tumor sample. The method uses a belief-propagation algorithm to infer gene activity from gene expression and copy number data in the context of a set of pathway interactions. RESULTS: The method was found to be both sensitive and specific on a set of positive and negative controls for multiple cancers for which pathway information was available. Application to the Cancer Genome Atlas glioblastoma, ovarian and lung squamous cancer datasets revealed several novel mutations with predicted high impact including several genes mutated at low frequency suggesting the approach will be complementary to current approaches that rely on the prevalence of events to reach statistical significance. AVAILABILITY: All source code is available at the github repository http:github.org/paradigmshift. CONTACT: jstuart@soe.ucsc.edu SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


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