Bayesian variable selection for hierarchical gene–environment and gene–gene interactions

被引:0
|
作者
Changlu Liu
Jianzhong Ma
Christopher I. Amos
机构
[1] The University of Texas Health Science Center at Houston and The University of Texas MD Anderson Cancer Center,Biomathematics and Biostatistics Program, Graduate School of Biomedical Sciences
[2] Novartis Pharmaceuticals,Division of Clinical and Translational Sciences, Department of Internal Medicine, Medical School, and Biostatistics/Epidemiology/Research Design (BERD) Component, Center for Clinical and Translational Sciences (CCTS)
[3] University of Texas Health Science Center at Houston,Department of Community and Family Medicine
[4] Geisel School of Medicine,undefined
[5] Dartmouth College,undefined
来源
Human Genetics | 2015年 / 134卷
关键词
Variable Selection; Hierarchical Model; Gene Environment Interaction; Independent Model; Bayesian Variable Selection;
D O I
暂无
中图分类号
学科分类号
摘要
We propose a Bayesian hierarchical mixture model framework that allows us to investigate the genetic and environmental effects, gene by gene interactions and gene by environment interactions in the same model. Our approach incorporates the natural hierarchical structure between the main effects and interaction effects into a mixture model, such that our methods tend to remove the irrelevant interaction effects more effectively, resulting in more robust and parsimonious models. We consider both strong and weak hierarchical models. For a strong hierarchical model, both the main effects between interacting factors must be present for the interactions to be considered in the model development, while for a weak hierarchical model, only one of the two main effects is required to be present for the interaction to be evaluated. Our simulation results show that the proposed strong and weak hierarchical mixture models work well in controlling false-positive rates and provide a powerful approach for identifying the predisposing effects and interactions in gene–environment interaction studies, in comparison with the naive model that does not impose this hierarchical constraint in most of the scenarios simulated. We illustrate our approach using data for lung cancer and cutaneous melanoma.
引用
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页码:23 / 36
页数:13
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