| Literature DB >> 35668300 |
Steven Gazal1,2,3,4, Omer Weissbrod5,6, Farhad Hormozdiari5,6, Kushal K Dey5,6, Joseph Nasser6, Karthik A Jagadeesh5,6, Daniel J Weiner6, Huwenbo Shi5,6, Charles P Fulco6,7,8, Luke J O'Connor6, Bogdan Pasaniuc9, Jesse M Engreitz6,10,11, Alkes L Price12,13,14.
Abstract
Disease-associated single-nucleotide polymorphisms (SNPs) generally do not implicate target genes, as most disease SNPs are regulatory. Many SNP-to-gene (S2G) linking strategies have been developed to link regulatory SNPs to the genes that they regulate in cis. Here, we developed a heritability-based framework for evaluating and combining different S2G strategies to optimize their informativeness for common disease risk. Our optimal combined S2G strategy (cS2G) included seven constituent S2G strategies and achieved a precision of 0.75 and a recall of 0.33, more than doubling the recall of any individual strategy. We applied cS2G to fine-mapping results for 49 UK Biobank diseases/traits to predict 5,095 causal SNP-gene-disease triplets (with S2G-derived functional interpretation) with high confidence. We further applied cS2G to provide an empirical assessment of disease omnigenicity; we determined that the top 1% of genes explained roughly half of the SNP heritability linked to all genes and that gene-level architectures vary with variant allele frequency.Entities:
Mesh:
Year: 2022 PMID: 35668300 DOI: 10.1038/s41588-022-01087-y
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 41.307