Authors
Wen Zhang, Georgios Voloudakis, Veera M Rajagopal, Ben Readhead, Joel T Dudley, Eric E Schadt, Johan LM Björkegren, Yungil Kim, John F Fullard, Gabriel E Hoffman, Panos Roussos
Publication date
2019/8/23
Journal
Nature communications
Volume
10
Issue
1
Pages
3834
Publisher
Nature Publishing Group UK
Description
Transcriptome-wide association studies integrate gene expression data with common risk variation to identify gene-trait associations. By incorporating epigenome data to estimate the functional importance of genetic variation on gene expression, we generate a small but significant improvement in the accuracy of transcriptome prediction and increase the power to detect significant expression-trait associations. Joint analysis of 14 large-scale transcriptome datasets and 58 traits identify 13,724 significant expression-trait associations that converge on biological processes and relevant phenotypes in human and mouse phenotype databases. We perform drug repurposing analysis and identify compounds that mimic, or reverse, trait-specific changes. We identify genes that exhibit agonistic pleiotropy for genetically correlated traits that converge on shared biological pathways and elucidate distinct processes in disease …
Total citations
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