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Enhanced Statistical Tests for GWAS in Admixed Populations: Assessment using African Americans from CARe and a Breast Cancer Consortium

机译:混合人群中GWAS的增强统计测试:使用CARe和乳腺癌协会的非洲裔美国人进行的评估

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摘要

While genome-wide association studies (GWAS) have primarily examined populations of European ancestry, more recent studies often involve additional populations, including admixed populations such as African Americans and Latinos. In admixed populations, linkage disequilibrium (LD) exists both at a fine scale in ancestral populations and at a coarse scale (admixture-LD) due to chromosomal segments of distinct ancestry. Disease association statistics in admixed populations have previously considered SNP association (LD mapping) or admixture association (mapping by admixture-LD), but not both. Here, we introduce a new statistical framework for combining SNP and admixture association in case-control studies, as well as methods for local ancestry-aware imputation. We illustrate the gain in statistical power achieved by these methods by analyzing data of 6,209 unrelated African Americans from the CARe project genotyped on the Affymetrix 6.0 chip, in conjunction with both simulated and real phenotypes, as well as by analyzing the FGFR2 locus using breast cancer GWAS data from 5,761 African-American women. We show that, at typed SNPs, our method yields an 8% increase in statistical power for finding disease risk loci compared to the power achieved by standard methods in case-control studies. At imputed SNPs, we observe an 11% increase in statistical power for mapping disease loci when our local ancestry-aware imputation framework and the new scoring statistic are jointly employed. Finally, we show that our method increases statistical power in regions harboring the causal SNP in the case when the causal SNP is untyped and cannot be imputed. Our methods and our publicly available software are broadly applicable to GWAS in admixed populations.
机译:虽然全基因组关联研究(GWAS)主要研究了欧洲血统的种群,但最近的研究通常涉及其他种群,包括非裔美国人和拉丁裔的混合种群。在混合种群中,由于祖先的染色体段不同,连锁不平衡(LD)在祖先种群中既存在细小规模,又在粗略规模(admixture-LD)中存在。混合人群中的疾病关联统计以前曾考虑过SNP关联(LD映射)或混合物关联(通过admixture-LD进行映射),但不能同时考虑两者。在这里,我们介绍了一种在病例对照研究中结合SNP和掺合剂关联的新统计框架,以及用于本地祖先感知归因的方法。我们通过分析来自Affymetrix 6.0芯片上基因分型的CARe项目的6,209位无关的非洲裔美国人的数据,并结合模拟和真实表型,以及通过分析乳腺癌的FGFR2基因座,来说明通过这些方法获得的统计功效GWAS来自5761名非裔美国女性的数据。我们显示,与病例对照研究中通过标准方法获得的功能相比,在分型SNP处,我们的方法发现疾病风险基因座的统计能力提高了8%。在推算的SNP上,当我们结合使用本地祖先感知的推算框架和新的评分统计数据时,我们观察到绘制疾病位点的统计能力提高了11%。最后,我们证明了在因果SNP未分类且无法归因的情况下,我们的方法提高了包含因果SNP的区域的统计能力。我们的方法和公开可用的软件广泛适用于混合人群中的GWAS。

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