Title of article :
Fast and Accurate Genome-Wide Association Test of Multiple Quantitative Traits
Author/Authors :
Wu, Baolin School of Public Health - University of Minnesota - Minneapolis, USA , Pankow, James S School of Public Health - University of Minnesota - Minneapolis, USA
Abstract :
Multiple correlated traits are ofen collected in genetic studies. By jointly analyzing multiple traits, we can increase power by
aggregating multiple weak efects and reveal additional insights into the genetic architecture of complex human diseases. In this
article, we propose a multivariate linear regression-based method to test the joint association of multiple quantitative traits. It is
fexible to accommodate any covariates, has very accurate control of type I errors, and ofers very competitive performance. We also
discuss fast and accurate signifcance � value computation especially for genome-wide association studies with small-to-medium
sample sizes. We demonstrate through extensive numerical studies that the proposed method has competitive performance. Its
usefulness is further illustrated with application to genome-wide association analysis of diabetes-related traits in the Atherosclerosis
Risk in Communities (ARIC) study. We found some very interesting associations with diabetes traits which have not been reported
before. We implemented the proposed methods in a publicly available R package.
Keywords :
Genome-Wide , ARIC , Quantitative
Journal title :
Computational and Mathematical Methods in Medicine