Zhang Ziang, Lawless Jerald F, Paterson Andrew D, Sun Lei
Department of Human Genetics, University of Chicago, Chicago, Illinois, United States of America.
Department of Statistical Sciences, University of Toronto, Toronto, Ontario, Canada.
PLoS Genet. 2025 Aug 22;21(8):e1011822. doi: 10.1371/journal.pgen.1011822. eCollection 2025 Aug.
In genome-wide association studies (GWAS), it is often desirable to test for interactions, such as gene-environment (G x E) or gene-gene (G x G) interactions, between single-nucleotide polymorphisms (SNPs, G's) and environmental variables (E's). However, directly accounting for interaction is often infeasible, because the interacting variable is latent or the computational burden is too large. For quantitative traits (Y) that are approximately normally distributed, it has been shown that indirect testing on GxE can be done by testing for heteroskedasticity of Y between genotypes. However, when traits are binary, the existing methodology based on testing the heteroskedasticity of the trait across genotypes cannot be generalized. In this paper, we propose an approach to indirectly test interaction effects for binary traits and subsequently propose a joint test that accounts for the main and interaction effects of each SNP during GWAS. The final method is straightforward to implement in practice-it simply involves adding a non-additive (i.e., dominance) term to standard GWAS additive models for binary traits and testing its significance. We illustrate the statistical features including type-I-error control and power of the proposed method through extensive numerical studies. Applying our method to the UK Biobank dataset, we showcase the practical utility of the proposed method, revealing SNPs and genes with strong potential for latent interaction effects.
在全基因组关联研究(GWAS)中,常常需要检验单核苷酸多态性(SNP,记为G)与环境变量(记为E)之间的相互作用,如基因 - 环境(G×E)或基因 - 基因(G×G)相互作用。然而,直接考虑相互作用往往不可行,因为相互作用变量是潜在的,或者计算负担过大。对于近似正态分布的数量性状(Y),已有研究表明,可以通过检验不同基因型间Y的异方差性来间接检验G×E。然而,当性状为二元性状时,基于检验性状在不同基因型间异方差性的现有方法无法推广。在本文中,我们提出一种间接检验二元性状相互作用效应的方法,随后提出一种在GWAS中考虑每个SNP的主效应和相互作用效应的联合检验方法。最终方法在实践中易于实现——只需在二元性状的标准GWAS加性模型中添加一个非加性(即显性)项并检验其显著性。我们通过大量数值研究说明了所提方法的统计特征,包括I型错误控制和检验效能。将我们的方法应用于英国生物银行数据集,展示了所提方法的实际效用,揭示了具有潜在相互作用效应强大潜力的SNP和基因。