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Testing for Measured Gene-Environment Interaction: Problems with the use of Cross-Product Terms and a Regression Model Reparameterization Solution

机译:测得的基因-环境相互作用的测试:跨产品术语和回归模型重新参数化解决方案的使用问题

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摘要

The study of gene-environment interaction (G × E) has garnered widespread attention. The most common way to assess interaction effects is in a regression model with a G × E interaction term that is a product of the values specified for the genotypic (G) and environmental (E) variables. In this paper we discuss the circumstances under which interaction can be modeled as a product term and cases in which use of a product term is inappropriate and may lead to erroneous conclusions about the presence and nature of interaction effects. In the case of a binary coded genetic variant (as used in dominant and recessive models, or where the minor allele occurs so infrequently that it is not observed in the homozygous state), the regression coefficient corresponding to a significant interaction term reflects a slope difference between the two genotype categories and appropriately characterizes the statistical interaction between the genetic and environmental variables. However, when using a three-category polymorphic genotype, as is commonly done when modeling an additive effect, both false positive and false negative results can occur, and the nature of the interaction can be misrepresented. We present a reparameterized regression equation that accurately captures interaction effects without the constraints imposed by modeling interactions using a single cross-product term. In addition, we provide a series of recommendations for making conclusions about the presence of meaningful G × E interactions, which take into account the nature of the observed interactions and whether they map onto sensible genotypic models.
机译:基因-环境相互作用(G×E)的研究已引起广泛关注。评估相互作用效应的最常见方法是在G×E相互作用项的回归模型中,该项是为基因型(G)和环境(E)变量指定的值的乘积。在本文中,我们讨论了在什么情况下可以将交互建模为产品项,以及在哪些情况下不宜使用产品项,并且可能导致关于交互作用的存在和性质的错误结论。对于二进制编码的遗传变异(用于显性和隐性模型,或次要等位基因很少出现,以至于在纯合子状态下观察不到),对应于显着相互作用项的回归系数反映了斜率差异在两个基因型类别之间进行区分,并适当地描述了遗传和环境变量之间的统计相互作用。但是,当使用三类多态性基因型时(如对加性效应进行建模时通常所做的那样),会同时出现假阳性和假阴性结果,并且相互作用的性质可能会被错误地表述。我们提供了一个重新参数化的回归方程,该方程可精确捕获交互作用,而不受使用单个叉积项对交互进行建模所施加的约束。此外,我们提供了一系列有关存在有意义的G×E相互作用的结论的建议,其中应考虑到观察到的相互作用的性质以及它们是否映射到合理的基因型模型上。

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