Statistical Methods for Testing Genetic Pleiotropy

Genetics. 2016 Oct;204(2):483-497. doi: 10.1534/genetics.116.189308. Epub 2016 Aug 15.

Abstract

Genetic pleiotropy is when a single gene influences more than one trait. Detecting pleiotropy and understanding its causes can improve the biological understanding of a gene in multiple ways, yet current multivariate methods to evaluate pleiotropy test the null hypothesis that none of the traits are associated with a variant; departures from the null could be driven by just one associated trait. A formal test of pleiotropy should assume a null hypothesis that one or no traits are associated with a genetic variant. For the special case of two traits, one can construct this null hypothesis based on the intersection-union (IU) test, which rejects the null hypothesis only if the null hypotheses of no association for both traits are rejected. To allow for more than two traits, we developed a new likelihood-ratio test for pleiotropy. We then extended the testing framework to a sequential approach to test the null hypothesis that [Formula: see text] traits are associated, given that the null of k traits are associated was rejected. This provides a formal testing framework to determine the number of traits associated with a genetic variant, while accounting for correlations among the traits. By simulations, we illustrate the type I error rate and power of our new methods; describe how they are influenced by sample size, the number of traits, and the trait correlations; and apply the new methods to multivariate immune phenotypes in response to smallpox vaccination. Our new approach provides a quantitative assessment of pleiotropy, enhancing current analytic practice.

Keywords: constrained model; likelihood-ratio test; multivariate analysis; seemingly unrelated regression; sequential testing.

MeSH terms

  • Computer Simulation
  • Data Interpretation, Statistical*
  • Genetic Linkage / genetics
  • Genetic Pleiotropy*
  • Genetic Variation
  • Humans
  • Models, Theoretical*
  • Phenotype
  • Quantitative Trait Loci / genetics*