| Literature DB >> 33597505 |
Huwenbo Shi1,2, Steven Gazal3,4, Masahiro Kanai4,5,6,7,8, Evan M Koch9,10, Armin P Schoech3,4,11, Katherine M Siewert3,4, Samuel S Kim3,4,12, Yang Luo4,7,9,13,14, Tiffany Amariuta4,7,13,14,15, Hailiang Huang5,6,10, Yukinori Okada8,16, Soumya Raychaudhuri4,7,9,13,14,17, Shamil R Sunyaev9,10, Alkes L Price18,19,20.
Abstract
Many diseases exhibit population-specific causal effect sizes with trans-ethnic genetic correlations significantly less than 1, limiting trans-ethnic polygenic risk prediction. We develop a new method, S-LDXR, for stratifying squared trans-ethnic genetic correlation across genomic annotations, and apply S-LDXR to genome-wide summary statistics for 31 diseases and complex traits in East Asians (average N = 90K) and Europeans (average N = 267K) with an average trans-ethnic genetic correlation of 0.85. We determine that squared trans-ethnic genetic correlation is 0.82× (s.e. 0.01) depleted in the top quintile of background selection statistic, implying more population-specific causal effect sizes. Accordingly, causal effect sizes are more population-specific in functionally important regions, including conserved and regulatory regions. In regions surrounding specifically expressed genes, causal effect sizes are most population-specific for skin and immune genes, and least population-specific for brain genes. Our results could potentially be explained by stronger gene-environment interaction at loci impacted by selection, particularly positive selection.Entities:
Mesh:
Year: 2021 PMID: 33597505 PMCID: PMC7889654 DOI: 10.1038/s41467-021-21286-1
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919