| Literature DB >> 31598692 |
Taeyeop Lee1, Min Kyung Sung2,3, Seulkee Lee1,2,4, Woojin Yang2,5, Jaeho Oh2, Jeong Yeon Kim2, Seongwon Hwang6, Hyo-Jeong Ban7, Jung Kyoon Choi2.
Abstract
Major progress in disease genetics has been made through genome-wide association studies (GWASs). One of the key tasks for post-GWAS analyses is to identify causal noncoding variants with regulatory function. Here, on the basis of >2000 functional features, we developed a convolutional neural network framework for combinatorial, nonlinear modeling of complex patterns shared by risk variants scattered among multiple associated loci. When applied for major psychiatric disorders and autoimmune diseases, neural and immune features, respectively, exhibited high explanatory power while reflecting the pathophysiology of the relevant disease. The predicted causal variants were concentrated in active regulatory regions of relevant cell types and tended to be in physical contact with transcription factors while residing in evolutionarily conserved regions and resulting in expression changes of genes related to the given disease. We demonstrate some examples of novel candidate causal variants and associated genes. Our method is expected to contribute to the identification and functional interpretation of potential causal noncoding variants in post-GWAS analyses.Entities:
Year: 2019 PMID: 31598692 PMCID: PMC6902027 DOI: 10.1093/nar/gkz868
Source DB: PubMed Journal: Nucleic Acids Res ISSN: 0305-1048 Impact factor: 16.971