| Literature DB >> 28036406 |
Jianxin Shi1, Ju-Hyun Park2, Jubao Duan3, Sonja T Berndt1, Winton Moy4, Kai Yu1, Lei Song1, William Wheeler5, Xing Hua1, Debra Silverman1, Montserrat Garcia-Closas1, Chao Agnes Hsiung6, Jonine D Figueroa1,7, Victoria K Cortessis8,9, Núria Malats10, Margaret R Karagas11, Paolo Vineis12,13, I-Shou Chang14, Dongxin Lin15,16, Baosen Zhou17, Adeline Seow18, Keitaro Matsuo19, Yun-Chul Hong20, Neil E Caporaso1, Brian Wolpin21,22, Eric Jacobs23, Gloria M Petersen24, Alison P Klein25,26, Donghui Li27, Harvey Risch28, Alan R Sanders3, Li Hsu29, Robert E Schoen30, Hermann Brenner31,32,33, Rachael Stolzenberg-Solomon1, Pablo Gejman3, Qing Lan1, Nathaniel Rothman1, Laufey T Amundadottir1, Maria Teresa Landi1, Douglas F Levinson34, Stephen J Chanock1, Nilanjan Chatterjee1,35,36.
Abstract
Recent heritability analyses have indicated that genome-wide association studies (GWAS) have the potential to improve genetic risk prediction for complex diseases based on polygenic risk score (PRS), a simple modelling technique that can be implemented using summary-level data from the discovery samples. We herein propose modifications to improve the performance of PRS. We introduce threshold-dependent winner's-curse adjustments for marginal association coefficients that are used to weight the single-nucleotide polymorphisms (SNPs) in PRS. Further, as a way to incorporate external functional/annotation knowledge that could identify subsets of SNPs highly enriched for associations, we propose variable thresholds for SNPs selection. We applied our methods to GWAS summary-level data of 14 complex diseases. Across all diseases, a simple winner's curse correction uniformly led to enhancement of performance of the models, whereas incorporation of functional SNPs was beneficial only for selected diseases. Compared to the standard PRS algorithm, the proposed methods in combination led to notable gain in efficiency (25-50% increase in the prediction R2) for 5 of 14 diseases. As an example, for GWAS of type 2 diabetes, winner's curse correction improved prediction R2 from 2.29% based on the standard PRS to 3.10% (P = 0.0017) and incorporating functional annotation data further improved R2 to 3.53% (P = 2×10-5). Our simulation studies illustrate why differential treatment of certain categories of functional SNPs, even when shown to be highly enriched for GWAS-heritability, does not lead to proportionate improvement in genetic risk-prediction because of non-uniform linkage disequilibrium structure.Entities:
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Year: 2016 PMID: 28036406 PMCID: PMC5201242 DOI: 10.1371/journal.pgen.1006493
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917