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Bayesian approach to assessing population differences in genetic risk of disease with application to prostate cancer

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posted on 2024-05-02, 09:23 authored by Iain R Timmins, The PRACTICAL Consortium, Frank DudbridgeFrank Dudbridge
Population differences in risk of disease are common, but the potential genetic basis for these differences is not well understood. A standard approach is to compare genetic risk across populations by testing for mean differences in polygenic scores, but existing studies that use this approach do not account for statistical noise in effect estimates (i.e., the GWAS betas) that arise due to the finite sample size of GWAS training data. Here, we show using Bayesian polygenic score methods that the level of uncertainty in estimates of genetic risk differences across populations is highly dependent on the GWAS training sample size, the polygenicity (number of causal variants), and genetic distance (FST) between the populations considered. We derive a Wald test for formally assessing the difference in genetic risk across populations, which we show to have calibrated type 1 error rates under a simplified assumption that all SNPs are independent, which we achieve in practise using linkage disequilibrium (LD) pruning. We further provide closed-form expressions for assessing the uncertainty in estimates of relative genetic risk across populations under the special case of an infinitesimal genetic architecture. We suggest that for many complex traits and diseases, particularly those with more polygenic architectures, current GWAS sample sizes are insufficient to detect moderate differences in genetic risk across populations, though more substantial differences in relative genetic risk (relative risk > 1.5) can be detected. We show that conventional approaches that do not account for sampling error from the training sample, such as using a simple t-test, have very high type 1 error rates. When applying our approach to prostate cancer, we demonstrate a higher genetic risk in African Ancestry men, with lower risk in men of European followed by East Asian ancestry.

Funding

HCM: Using genetic associations to account for selection bias in epidemiology

Medical Research Council

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History

Author affiliation

College of Life Sciences/Population Health Sciences

Version

  • VoR (Version of Record)

Published in

PLOS Genetics

Volume

20

Issue

4

Pagination

e1011212

Publisher

Public Library of Science (PLoS)

issn

1553-7390

eissn

1553-7404

Copyright date

2024

Available date

2024-05-02

Editors

Epstein MP

Spatial coverage

United States

Language

en

Deposited by

Professor Frank Dudbridge

Deposit date

2024-04-27

Data Access Statement

The summary statistics on prostate cancer are currently available via dbGaP at phs001120.v2.p2, or via application to PRACTICAL (contact: PRACTICAL@icr.ac.uk).

Rights Retention Statement

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