Abstract

In genetic association analysis, several relevant phenotypes or multivariate traits with different types of components are usually collected to study complex or multifactorial diseases. Over the past few years, jointly testing for association between multivariate traits and multiple genetic variants has become more popular because it can increase statistical power to identify causal genes in pedigree- or population-based studies. However, most of the existing methods mainly focus on testing genetic variants associated with multiple continuous phenotypes. In this investigation, we develop a framework for identifying the pleiotropic effects of genetic variants on multivariate traits by using collapsing and kernel methods with pedigree- or population-structured data. The proposed framework is applicable to the burden test, the kernel test, and the omnibus test for autosomes and the X chromosome. The proposed multivariate trait association methods can accommodate continuous phenotypes or binary phenotypes and further can adjust for covariates. Simulation studies show that the performance of our methods is satisfactory with respect to the empirical type I error rates and power rates in comparison with the existing methods.

Highlights

  • Genome-wide association studies (GWAS) intend to find genetic variants such as single nucleotide polymorphisms (SNPs) associated with common traits or with complex diseases [1, 2]

  • Based on the similar simulation set-up as those usually considered from existing genetic association tests [39, 43, 51], we investigate the effect of the proposed methods, homogeneous kernel statistic (HoK), heterogeneous kernel statistic (HeK), burden test (BT), homogeneous omnibus test (HoO), and heterogeneous omnibus test (HeO), for identifying genetic variants that are associated with multiple traits

  • We develop a retrospective framework for identifying the pleiotropic effects of genetic variants on multivariate traits by using collapsing and kernel methods with pedigree- or population-structured data

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Summary

Introduction

Genome-wide association studies (GWAS) intend to find genetic variants such as single nucleotide polymorphisms (SNPs) associated with common traits or with complex diseases [1, 2]. Association studies, where the correlation relationship between a genetic variant and a trait is evaluated, are helpful for mapping genes influencing complex diseases [3]. By a suitable joint or multivariate analysis framework of multivariate traits, we can gain more statistical power to identify pleiotropic effects of genetic variants on multivariate traits [3, 5,6,7,8,9,10,11,12] and can further understand the genetic architecture of the disease of interest [5, 13]. The joint analysis of multivariate traits has become popular because it can increase statistical power over analyzing only one trait at a time [1, 4]

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