A versatile omnibus test for detecting mean and variance heterogeneity

Ying Cao, Peng Wei, Matthew Bailey, John S.K. Kauwe, Taylor J. Maxwell

Research output: Contribution to journalArticlepeer-review

34 Scopus citations

Abstract

Recent research has revealed loci that display variance heterogeneity through various means such as biological disruption, linkage disequilibrium (LD), gene-by-gene (G × G), or gene-by-environment interaction. We propose a versatile likelihood ratio test that allows joint testing for mean and variance heterogeneity (LRTMV) or either effect alone (LRTM or LRTV) in the presence of covariates. Using extensive simulations for our method and others, we found that all parametric tests were sensitive to nonnormality regardless of any trait transformations. Coupling our test with the parametric bootstrap solves this issue. Using simulations and empirical data from a known mean-only functional variant, we demonstrate how LD can produce variance-heterogeneity loci (vQTL) in a predictable fashion based on differential allele frequencies, high D', and relatively low r2 values. We propose that a joint test for mean and variance heterogeneity is more powerful than a variance-only test for detecting vQTL. This takes advantage of loci that also have mean effects without sacrificing much power to detect variance only effects. We discuss using vQTL as an approach to detect G × G interactions and also how vQTL are related to relationship loci, and how both can create prior hypothesis for each other and reveal the relationships between traits and possibly between components of a composite trait.

Original languageEnglish (US)
Pages (from-to)51-59
Number of pages9
JournalGenetic epidemiology
Volume38
Issue number1
DOIs
StatePublished - Jan 2014

Keywords

  • G × E
  • G × G
  • GWAS
  • Linkage disequilibrium
  • RQTL
  • VQTL

ASJC Scopus subject areas

  • Epidemiology
  • Genetics(clinical)

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