Author:
Sun Song,Yang Fan,Tan Guihong,Costanzo Michael,Oughtred Rose,Hirschman Jodi,Theesfeld Chandra L.,Bansal Pritpal,Sahni Nidhi,Yi Song,Yu Analyn,Tyagi Tanya,Tie Cathy,Hill David E.,Vidal Marc,Andrews Brenda J.,Boone Charles,Dolinski Kara,Roth Frederick P.
Abstract
We can now routinely identify coding variants within individual human genomes. A pressing challenge is to determine which variants disrupt the function of disease-associated genes. Both experimental and computational methods exist to predict pathogenicity of human genetic variation. However, a systematic performance comparison between them has been lacking. Therefore, we developed and exploited a panel of 26 yeast-based functional complementation assays to measure the impact of 179 variants (101 disease- and 78 non-disease-associated variants) from 22 human disease genes. Using the resulting reference standard, we show that experimental functional assays in a 1-billion-year diverged model organism can identify pathogenic alleles with significantly higher precision and specificity than current computational methods.
Funder
Swedish Research Council International Postdoc
National Institutes of Health/National Human Genome Research Institute (NIH/NHGRI) Centers of Excellence in Genomic Sciences
NIH/NHGRI
Canada Excellence Research Chairs Program
National Institutes of Health
Cancer Prevention and Research Institute of Texas
Canadian Institutes of Health Research
Fellowships from the Canadian Institute for Advanced Research
Publisher
Cold Spring Harbor Laboratory
Subject
Genetics (clinical),Genetics
Cited by
101 articles.
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