Improved Semiparametric Analysis of Polygenic Gene-Environment Interactions in Case-Control Studies
Tianying Wang, Alex Asher

TL;DR
This paper introduces an improved semiparametric method for analyzing gene-environment interactions in case-control studies, enhancing efficiency without additional assumptions by symmetrically treating genetic and environmental variables.
Contribution
It advances previous methods by exploiting symmetry between genetic and environmental factors, leading to more efficient estimates in polygenic case-control data.
Findings
Increased estimator efficiency demonstrated through simulations.
Method achieves asymptotic efficiency gain without extra assumptions.
Applied successfully to breast cancer case-control data.
Abstract
Standard logistic regression analysis of case-control data has low power to detect gene-environment interactions, but until recently it was the only method that could be used on complex polygenic data for which parametric distributional models are not feasible. Under the assumption of gene-environment independence in the underlying population, Stalder et al. (2017, Biometrika, 104, 801-812) developed a retrospective method that treats both genetic and environmental variables nonparametrically. However, the mathematical symmetry of genetic and environmental variables is overlooked. We propose an improvement to the method of Stalder et al. (2017) that increases the efficiency of the estimates with no additional assumptions and modest computational cost. This improvement is achieved by treating the genetic and environmental variables symmetrically to generate two sets of parameter…
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Taxonomy
TopicsGenetic Associations and Epidemiology · Genetic and phenotypic traits in livestock · Genetic Mapping and Diversity in Plants and Animals
