TY - JOUR
T1 - Leveraging phenotypic variability to identify genetic interactions in human phenotypes
AU - Marderstein, Andrew R.
AU - Davenport, Emily R.
AU - Kulm, Scott
AU - Van Hout, Cristopher V.
AU - Elemento, Olivier
AU - Clark, Andrew G.
N1 - Publisher Copyright:
© 2020
PY - 2021/1/7
Y1 - 2021/1/7
N2 - Although thousands of loci have been associated with human phenotypes, the role of gene-environment (GxE) interactions in determining individual risk of human diseases remains unclear. This is partly because of the severe erosion of statistical power resulting from the massive number of statistical tests required to detect such interactions. Here, we focus on improving the power of GxE tests by developing a statistical framework for assessing quantitative trait loci (QTLs) associated with the trait means and/or trait variances. When applying this framework to body mass index (BMI), we find that GxE discovery and replication rates are significantly higher when prioritizing genetic variants associated with the variance of the phenotype (vQTLs) compared to when assessing all genetic variants. Moreover, we find that vQTLs are enriched for associations with other non-BMI phenotypes having strong environmental influences, such as diabetes or ulcerative colitis. We show that GxE effects first identified in quantitative traits such as BMI can be used for GxE discovery in disease phenotypes such as diabetes. A clear conclusion is that strong GxE interactions mediate the genetic contribution to body weight and diabetes risk.
AB - Although thousands of loci have been associated with human phenotypes, the role of gene-environment (GxE) interactions in determining individual risk of human diseases remains unclear. This is partly because of the severe erosion of statistical power resulting from the massive number of statistical tests required to detect such interactions. Here, we focus on improving the power of GxE tests by developing a statistical framework for assessing quantitative trait loci (QTLs) associated with the trait means and/or trait variances. When applying this framework to body mass index (BMI), we find that GxE discovery and replication rates are significantly higher when prioritizing genetic variants associated with the variance of the phenotype (vQTLs) compared to when assessing all genetic variants. Moreover, we find that vQTLs are enriched for associations with other non-BMI phenotypes having strong environmental influences, such as diabetes or ulcerative colitis. We show that GxE effects first identified in quantitative traits such as BMI can be used for GxE discovery in disease phenotypes such as diabetes. A clear conclusion is that strong GxE interactions mediate the genetic contribution to body weight and diabetes risk.
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U2 - 10.1016/j.ajhg.2020.11.016
DO - 10.1016/j.ajhg.2020.11.016
M3 - Article
C2 - 33326753
AN - SCOPUS:85098947552
SN - 0002-9297
VL - 108
SP - 49
EP - 67
JO - American Journal of Human Genetics
JF - American Journal of Human Genetics
IS - 1
ER -