Department of Statistics, North Carolina State University, Raleigh, NC 27695, USA.
Am J Hum Genet. 2011 Aug 12;89(2):277-88. doi: 10.1016/j.ajhg.2011.07.007.
Genomic association analyses of complex traits demand statistical tools that are capable of detecting small effects of common and rare variants and modeling complex interaction effects and yet are computationally feasible. In this work, we introduce a similarity-based regression method for assessing the main genetic and interaction effects of a group of markers on quantitative traits. The method uses genetic similarity to aggregate information from multiple polymorphic sites and integrates adaptive weights that depend on allele frequencies to accomodate common and uncommon variants. Collapsing information at the similarity level instead of the genotype level avoids canceling signals that have the opposite etiological effects and is applicable to any class of genetic variants without the need for dichotomizing the allele types. To assess gene-trait associations, we regress trait similarities for pairs of unrelated individuals on their genetic similarities and assess association by using a score test whose limiting distribution is derived in this work. The proposed regression framework allows for covariates, has the capacity to model both main and interaction effects, can be applied to a mixture of different polymorphism types, and is computationally efficient. These features make it an ideal tool for evaluating associations between phenotype and marker sets defined by linkage disequilibrium (LD) blocks, genes, or pathways in whole-genome analysis.
基因组关联分析复杂性状需要统计工具,能够检测常见和罕见变异的小效应,并建模复杂的相互作用效应,同时计算上可行。在这项工作中,我们引入了一种基于相似性的回归方法,用于评估一组标记对数量性状的主要遗传和相互作用效应。该方法使用遗传相似性来聚合来自多个多态性位点的信息,并集成自适应权重,这些权重取决于等位基因频率,以适应常见和罕见变异。在相似性水平而不是基因型水平上合并信息可以避免消除具有相反病因效应的信号,并且适用于任何类别的遗传变异,而无需对等位基因类型进行二分法。为了评估基因-性状关联,我们对无关个体对的性状相似性进行回归,对其遗传相似性进行回归,并使用分数检验进行关联评估,其极限分布在本文中推导。所提出的回归框架允许协变量,具有建模主要和相互作用效应的能力,可应用于不同多态性类型的混合物,并且计算效率高。这些特性使其成为评估全基因组分析中通过连锁不平衡(LD)块、基因或途径定义的表型和标记集之间关联的理想工具。