Last updated:
Author(s):
Steven Gazal, Omer Weissbrod, Farhad Hormozdiari, Kushal K. Dey, Joseph Nasser, Karthik A. Jagadeesh, Daniel J. Weiner, Huwenbo Shi, Charles P. Fulco, Luke J. O'Connor, Bogdan Pasaniuc, Jesse M. Engreitz, Alkes L. Price
Publish date:
6 June 2022
Journal:
Nature Genetics
PubMed ID:
35668300

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.

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Institution:
Harvard School of Public Health, United States of America

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