Paper
Document
Download
Flag content
0

MUSSEL: Enhanced Bayesian Polygenic Risk Prediction Leveraging Information across Multiple Ancestry Groups

Authors
Jin Jin,Jianan Zhan
Jingning Zhang,Ruzhang Zhao,Jared O'Connell,Yunxuan Jiang,23andMe Research Team,Steve Buyske,Christopher R Gignoux,Christopher A Haiman,Eimear Kenny,Charles Kooperberg,Kari E North,Bertram L. Koelsch,Genevieve L Wojcik,Haoyu Zhang,Nilanjan Chatterjee,Jared O’Connell,Steven Buyske,Christopher Gignoux,Christopher Haiman,Kari North,Bertram Koelsch,Genevieve Wojcik
+22 authors
,Junpeng Zhan
Published
Jan 1, 2023
Show more
Save
TipTip
Document
Download
Flag content
0
TipTip
Save
Document
Download
Flag content

Abstract

Polygenic risk scores (PRS) are now showing promising predictive performance on a wide variety of complex traits and diseases, but there exists a substantial performance gap across different populations. We propose MUSSEL, a method for ancestry-specific polygenic prediction that borrows information in the summary statistics from genome-wide association studies (GWAS) across multiple ancestry groups. MUSSEL conducts Bayesian hierarchical modeling under a MUltivariate Spike-and-Slab model for effect-size distribution and incorporates an Ensemble Learning step using super learner to combine information across different tuning parameter settings and ancestry groups. In our simulation studies and data analyses of 16 traits across four distinct studies, totaling 5.7 million participants with a substantial ancestral diversity, MUSSEL shows promising performance compared to alternatives. The method, for example, has an average gain in prediction R2 across 11 continuous traits of 40.2% and 49.3% compared to PRS-CSx and CT-SLEB, respectively, in the African Ancestry population. The best-performing method, however, varies by GWAS sample size, target ancestry, underlying trait architecture, and the choice of reference samples for LD estimation, and thus ultimately, a combination of methods may be needed to generate the most robust PRS across diverse populations.

Paper PDF

This paper's license is marked as closed access or non-commercial and cannot be viewed on ResearchHub. Visit the paper's external site.