Τετάρτη 27 Σεπτεμβρίου 2017

IJERPH, Vol. 14, Pages 1134: An Efficient Test for Gene-Environment Interaction in Generalized Linear Mixed Models with Family Data

IJERPH, Vol. 14, Pages 1134: An Efficient Test for Gene-Environment Interaction in Generalized Linear Mixed Models with Family Data

International Journal of Environmental Research and Public Health doi: 10.3390/ijerph14101134

Authors: Mauricio Mazo Lopera Brandon Coombes Mariza de Andrade

Gene-environment (GE) interaction has important implications in the etiology of complex diseases that are caused by a combination of genetic factors and environment variables. Several authors have developed GE analysis in the context of independent subjects or longitudinal data using a gene-set. In this paper, we propose to analyze GE interaction for discrete and continuous phenotypes in family studies by incorporating the relatedness among the relatives for each family into a generalized linear mixed model (GLMM) and by using a gene-based variance component test. In addition, we deal with collinearity problems arising from linkage disequilibrium among single nucleotide polymorphisms (SNPs) by considering their coefficients as random effects under the null model estimation. We show that the best linear unbiased predictor (BLUP) of such random effects in the GLMM is equivalent to the ridge regression estimator. This equivalence provides a simple method to estimate the ridge penalty parameter in comparison to other computationally-demanding estimation approaches based on cross-validation schemes. We evaluated the proposed test using simulation studies and applied it to real data from the Baependi Heart Study consisting of 76 families. Using our approach, we identified an interaction between BMI and the Peroxisome Proliferator Activated Receptor Gamma (PPARG) gene associated with diabetes.



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