On the adjustment for covariates in genetic association analysis: A novel, simple principle to infer direct causal effects

Stijn Vansteelandt, Sylvie Goetgeluk, Sharon Lutz, Irwin Waldman, Helen Lyon, Eric E. Schadt, Scott T. Weiss, Christoph Lange

Research output: Contribution to journalArticlepeer-review

42 Scopus citations

Abstract

In genetic association studies, different complex phenotypes are often associated with the same marker. Such associations can be indicative of pleiotropy (i.e. common genetic causes), of indirect genetic effects via one of these phenotypes, or can be solely attributable to non-genetic/ environmental links between the traits. To identify the phenotypes with the inducing genetic association, statistical methodology is needed that is able to distinguish between the different causes of the genetic associations. Here, we propose a simple, general adjustment principle that can be incorporated into many standard genetic association tests which are then able to infer whether an SNP has a direct biological influence on a given trait other than through the SNP's influence on another correlated phenotype. Using simulation studies, we show that, in the presence of a non-marker related link between phenotypes, standard association tests without the proposed adjustment can be biased. In contrast to that, the proposed methodology remains unbiased. Its achieved power levels are identical to those of standard adjustment methods, making the adjustment principle universally applicable in genetic association studies. The principle is illustrated by an application to three genome-wide association analyses.

Original languageEnglish
Pages (from-to)394-405
Number of pages12
JournalGenetic Epidemiology
Volume33
Issue number5
DOIs
StatePublished - 2009
Externally publishedYes

Keywords

  • Causal diagram
  • Direct effect
  • Genetic pathways
  • Mediation
  • Pleiotropy

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