Discovering pure gene-environment interactions in blood pressure genome-wide association studies data: a two-step approach incorporating new statistics

被引:1
|
作者
Maggie Haitian Wang
Chien-Hsun Huang
Tian Zheng
Shaw-Hwa Lo
Inchi Hu
机构
[1] School of Public Health and Primary Care,Division of Biostatistics
[2] the Chinese University of Hong Kong,Department of Statistics
[3] Columbia University,Department of ISOM
[4] the Hong Kong University of Science and Technology,undefined
关键词
Systolic Blood Pressure; Diastolic Blood Pressure; Genetic Association; Influence Measure; Ribbon Synapse;
D O I
10.1186/1753-6561-8-S1-S62
中图分类号
学科分类号
摘要
Environment has long been known to play an important part in disease etiology. However, not many genome-wide association studies take environmental factors into consideration. There is also a need for new methods to identify the gene-environment interactions. In this study, we propose a 2-step approach incorporating an influence measure that capturespure gene-environment effect. We found that pure gene-age interaction has a stronger association than considering the genetic effect alone for systolic blood pressure, measured by counting the number of single-nucleotide polymorphisms (SNPs)reaching a certain significance level. We analyzed the subjects by dividing them into two age groups and found no overlap in the top identified SNPs between them. This suggested that age might have a nonlinear effect on genetic association. Furthermore, the scores of the top SNPs for the two age subgroups were about 3times those obtained when using all subjects for systolic blood pressure. In addition, the scores of the older age subgroup were much higher than those for the younger group. The results suggest that genetic effects are stronger in older age and that genetic association studies should take environmental effects into consideration, especially age.
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