Department of Biostatistics, City University of Hong Kong, Hong Kong SAR, China.
Guangzhou HKUST Fok Ying Tung Research Institute, Guangzhou, 511458, China.
Nat Commun. 2023 Oct 28;14(1):6870. doi: 10.1038/s41467-023-42614-7.
Fine-mapping prioritizes risk variants identified by genome-wide association studies (GWASs), serving as a critical step to uncover biological mechanisms underlying complex traits. However, several major challenges still remain for existing fine-mapping methods. First, the strong linkage disequilibrium among variants can limit the statistical power and resolution of fine-mapping. Second, it is computationally expensive to simultaneously search for multiple causal variants. Third, the confounding bias hidden in GWAS summary statistics can produce spurious signals. To address these challenges, we develop a statistical method for cross-population fine-mapping (XMAP) by leveraging genetic diversity and accounting for confounding bias. By using cross-population GWAS summary statistics from global biobanks and genomic consortia, we show that XMAP can achieve greater statistical power, better control of false positive rate, and substantially higher computational efficiency for identifying multiple causal signals, compared to existing methods. Importantly, we show that the output of XMAP can be integrated with single-cell datasets, which greatly improves the interpretation of putative causal variants in their cellular context at single-cell resolution.
精细映射优先考虑全基因组关联研究(GWAS)识别的风险变异,是揭示复杂性状背后生物学机制的关键步骤。然而,现有的精细映射方法仍然存在几个主要挑战。首先,变异之间的强连锁不平衡会限制精细映射的统计能力和分辨率。其次,同时搜索多个因果变异的计算成本很高。第三,GWAS 汇总统计数据中隐藏的混杂偏差会产生虚假信号。为了解决这些挑战,我们通过利用遗传多样性和考虑混杂偏差,开发了一种跨人群精细映射(XMAP)的统计方法。通过使用来自全球生物库和基因组联盟的跨人群 GWAS 汇总统计数据,我们表明 XMAP 可以在识别多个因果信号方面实现更高的统计能力、更好的假阳性率控制和显著更高的计算效率,与现有方法相比。重要的是,我们表明 XMAP 的输出可以与单细胞数据集集成,这大大提高了在单细胞分辨率下对细胞环境中假定因果变异的解释。