Duan Qing, Xu Zheng, Raffield Laura M, Chang Suhua, Wu Di, Lange Ethan M, Reiner Alex P, Li Yun
Department of Genetics, University of North Carolina, Chapel Hill, North Carolina, United States of America.
Curriculum in Bioinformatics and Computational Biology, University of North Carolina, Chapel Hill, North Carolina, United States of America.
Genet Epidemiol. 2018 Apr;42(3):288-302. doi: 10.1002/gepi.22104. Epub 2017 Dec 10.
Genetic association studies in admixed populations allow us to gain deeper understanding of the genetic architecture of human diseases and traits. However, population stratification, complicated linkage disequilibrium (LD) patterns, and the complex interplay of allelic and ancestry effects on phenotypic traits pose challenges in such analyses. These issues may lead to detecting spurious associations and/or result in reduced statistical power. Fortunately, if handled appropriately, these same challenges provide unique opportunities for gene mapping. To address these challenges and to take these opportunities, we propose a robust and powerful two-step testing procedure Local Ancestry Adjusted Allelic (LAAA) association. In the first step, LAAA robustly captures associations due to allelic effect, ancestry effect, and interaction effect, allowing detection of effect heterogeneity across ancestral populations. In the second step, LAAA identifies the source of association, namely allelic, ancestry, or the combination. By jointly modeling allele, local ancestry, and ancestry-specific allelic effects, LAAA is highly powerful in capturing the presence of interaction between ancestry and allele effect. We evaluated the validity and statistical power of LAAA through simulations over a broad spectrum of scenarios. We further illustrated its usefulness by application to the Candidate Gene Association Resource (CARe) African American participants for association with hemoglobin levels. We were able to replicate independent groups' previously identified loci that would have been missed in CARe without joint testing. Moreover, the loci, for which LAAA detected potential effect heterogeneity, were replicated among African Americans from the Women's Health Initiative study. LAAA is freely available at https://yunliweb.its.unc.edu/LAAA.
对混合人群进行基因关联研究,有助于我们更深入地了解人类疾病和性状的遗传结构。然而,群体分层、复杂的连锁不平衡(LD)模式,以及等位基因和祖先效应在表型性状上的复杂相互作用,给此类分析带来了挑战。这些问题可能导致检测到虚假关联和/或导致统计功效降低。幸运的是,如果处理得当,这些同样的挑战为基因定位提供了独特的机会。为了应对这些挑战并利用这些机会,我们提出了一种稳健且强大的两步检验程序——局部祖先调整等位基因(LAAA)关联法。在第一步中,LAAA能稳健地捕捉由等位基因效应、祖先效应和相互作用效应引起的关联,从而检测不同祖先群体间的效应异质性。在第二步中,LAAA能确定关联的来源,即等位基因、祖先或两者的组合。通过联合对等位基因、局部祖先和特定祖先的等位基因效应进行建模,LAAA在捕捉祖先和等位基因效应之间的相互作用方面具有很强的功效。我们通过在广泛的场景下进行模拟,评估了LAAA的有效性和统计功效。我们还通过将其应用于候选基因关联资源(CARe)中的非裔美国参与者与血红蛋白水平的关联研究,进一步说明了它的实用性。我们能够复制独立研究小组之前确定的位点,而这些位点在CARe研究中若不进行联合检验就会被遗漏。此外,LAAA检测到潜在效应异质性的位点,在来自妇女健康倡议研究的非裔美国人中得到了重复验证。LAAA可在https://yunliweb.its.unc.edu/LAAA上免费获取。