4.6 Article

Winner's Curse Correction and Variable Thresholding Improve Performance of Polygenic Risk Modeling Based on Genome-Wide Association Study Summary-Level Data

期刊

PLOS GENETICS
卷 12, 期 12, 页码 -

出版社

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pgen.1006493

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资金

  1. NIH Intramural Research program
  2. NIH [U19 CA148127]
  3. National Cancer Institute, National Institutes of Health, U.S. Department of Health and Human Services [U01 CA137088, R01 CA059045]
  4. Regional Council of Pays de la Loire
  5. Groupement des Entreprises Francaises dans la Lutte contre le Cancer (GEFLUC)
  6. Association Anne de Bretagne Genetique
  7. Ligue Regionale Contre le Cancer (LRCC)
  8. National Institutes of Health [R01 CA60987, R01 CA48998, P01 CA 055075, UM1 CA167552, R01 137178, R01 CA151993, P50 CA127003, UM1 CM 86107, R01 CM 37178, P01 CA87969, R01 CA042182, R37 CA54281, P01 CA033619, R01 CA63464, U01 CA074783, R01 CA076366, K05 CA154337]
  9. German Research Council (Deutsche Forschungsgemeinschaft) [BR 1704/6-1, BR 1704/6-3, BR 1704/6-4, CH 117/1-1]
  10. German Federal Ministry of Education and Research [01KH0404, 01ER0814]
  11. Ontario Research Fund
  12. Canadian Institutes of Health Research
  13. Ontario Institute for Cancer Research
  14. Ontario Ministry of Research and Innovation
  15. National Heart, Lung, and Blood Institute, National Institutes of Health, U.S. Department of Health and Human Services [HHSN268201100046C, HHSN268201100001C, HHSN268201100002C, HHSN268201100003C, HHSN268201100004C, HHSN271201100004C]

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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 R-2) for 5 of 14 diseases. As an example, for GWAS of type 2 diabetes, winner's curse correction improved prediction R-2 from 2.29% based on the standard PRS to 3.10% (P = 0.0017) and incorporating functional annotation data further improved R-2 to 3.53% (P = 2x10(-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.

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