Improving polygenic prediction in ancestrally diverse populations
journal contribution
posted on 2024-11-17, 14:04authored byYunfeng Ruan, Yen Feng Lin, Yen Chen Anne Feng, Chia Yen Chen, Max Lam, Zhenglin Guo, Yong Min Ahn, Kazufumi Akiyama, Makoto Arai, Ji Hyun Baek, Wei J Chen, Young Chul Chung, Gang Feng, Kumiko Fujii, Stephen J Glatt, Kyooseob Ha, Kotaro Hattori, Teruhiko Higuchi, Akitoyo Hishimoto, Kyung Sue Hong, Yasue Horiuchi, Hai Gwo Hwu, Masashi Ikeda, Sayuri Ishiwata, Masanari Itokawa, Nakao Iwata, Eun Jeong Joo, Rene S Kahn, Sung Wan Kim, Se Joo Kim
Polygenic risk scores (PRS) have attenuated cross-population predictive performance. As existing genome-wide association studies (GWAS) have been conducted predominantly in individuals of European descent, the limited transferability of PRS reduces their clinical value in non-European populations, and may exacerbate healthcare disparities. Recent efforts to level ancestry imbalance in genomic research have expanded the scale of non-European GWAS, although most remain underpowered. Here, we present a new PRS construction method, PRS-CSx, which improves cross-population polygenic prediction by integrating GWAS summary statistics from multiple populations. PRS-CSx couples genetic effects across populations via a shared continuous shrinkage (CS) prior, enabling more accurate effect size estimation by sharing information between summary statistics and leveraging linkage disequilibrium diversity across discovery samples, while inheriting computational efficiency and robustness from PRS-CS. We show that PRS-CSx outperforms alternative methods across traits with a wide range of genetic architectures, cross-population genetic overlaps and discovery GWAS sample sizes in simulations, and improves the prediction of quantitative traits and schizophrenia risk in non-European populations.
Funding
National Institute of Mental Health (NTU-110L8810)