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Leveraging functional genomic annotations and genome coverage to improve polygenic prediction of complex traits within and between ancestries.


ABSTRACT: We develop a method, SBayesRC, that integrates genome-wide association study (GWAS) summary statistics with functional genomic annotations to improve polygenic prediction of complex traits. Our method is scalable to whole-genome variant analysis and refines signals from functional annotations by allowing them to affect both causal variant probability and causal effect distribution. We analyze 50 complex traits and diseases using ∼7 million common single-nucleotide polymorphisms (SNPs) and 96 annotations. SBayesRC improves prediction accuracy by 14% in European ancestry and up to 34% in cross-ancestry prediction compared to the baseline method SBayesR, which does not use annotations, and outperforms other methods, including LDpred2, LDpred-funct, MegaPRS, PolyPred-S and PRS-CSx. Investigation of factors affecting prediction accuracy identifies a significant interaction between SNP density and annotation information, suggesting whole-genome sequence variants with annotations may further improve prediction. Functional partitioning analysis highlights a major contribution of evolutionary constrained regions to prediction accuracy and the largest per-SNP contribution from nonsynonymous SNPs.

SUBMITTER: Zheng Z 

PROVIDER: S-EPMC11096109 | biostudies-literature | 2024 May

REPOSITORIES: biostudies-literature

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Leveraging functional genomic annotations and genome coverage to improve polygenic prediction of complex traits within and between ancestries.

Zheng Zhili Z   Liu Shouye S   Sidorenko Julia J   Wang Ying Y   Lin Tian T   Yengo Loic L   Turley Patrick P   Ani Alireza A   Wang Rujia R   Nolte Ilja M IM   Snieder Harold H   Yang Jian J   Wray Naomi R NR   Goddard Michael E ME   Visscher Peter M PM   Zeng Jian J  

Nature genetics 20240430 5


We develop a method, SBayesRC, that integrates genome-wide association study (GWAS) summary statistics with functional genomic annotations to improve polygenic prediction of complex traits. Our method is scalable to whole-genome variant analysis and refines signals from functional annotations by allowing them to affect both causal variant probability and causal effect distribution. We analyze 50 complex traits and diseases using ∼7 million common single-nucleotide polymorphisms (SNPs) and 96 ann  ...[more]

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