Combining disease models to test for gene-environment interaction in nuclear families |
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Authors: | Hoffmann Thomas J Vansteelandt Stijn Lange Christoph Silverman Edwin K DeMeo Dawn L Laird Nan M |
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Affiliation: | Department of Biostatistics, Harvard School of Public Health, Boston, Massachusetts 02115, USA. tjh@post.harvard.edu |
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Abstract: | It is useful to have robust gene-environment interaction tests that can utilize a variety of family structures in an efficient way. This article focuses on tests for gene-environment interaction in the presence of main genetic and environmental effects. The objective is to develop powerful tests that can combine trio data with parental genotypes and discordant sibships when parents' genotypes are missing. We first make a modest improvement on a method for discordant sibs (discordant on phenotype), but the approach does not allow one to use families when all offspring are affected, e.g., trios. We then make a modest improvement on a Mendelian transmission-based approach that is inefficient when discordant sibs are available, but can be applied to any nuclear family. Finally, we propose a hybrid approach that utilizes the most efficient method for a specific family type, then combines over families. We utilize this hybrid approach to analyze a chronic obstructive pulmonary disorder dataset to test for gene-environment interaction in the Serpine2 gene with smoking. The methods are freely available in the R package fbati. |
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Keywords: | Binary trait Candidate gene analysis COPD Family‐based association tests Gene–environment interaction Serpine2 |
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