4.4 Article

Nonadditive Effects of Genes in Human Metabolomics

Journal

GENETICS
Volume 200, Issue 3, Pages 707-+

Publisher

GENETICS SOCIETY AMERICA
DOI: 10.1534/genetics.115.175760

Keywords

genome-wide association studies; nonadditive models; KORA; metabolomics; genotypic model

Funding

  1. Helmholtz Zentrum Munchen-German Research Center for Environmental Health
  2. German Federal Ministry of Education and Research
  3. State of Bavaria
  4. Munich Center of Health Sciences, Ludwig-Maximilians-Universitat, LMUinnovativ
  5. Wellcome Trust
  6. European Community's Seventh Framework Programme (FP7)
  7. National Institute for Health Research BioResource Clinical Research Facility and Biomedical Research Centre based at Guy's and St. Thomas' NHS Foundation Trust
  8. King's College London
  9. Helmholtz Association (Helmholtz-Russia Joint Research Group 310)
  10. European Union's Seventh Framework Programme (FP7-Health-F5) [305280]
  11. Oak Foundation
  12. Russian Foundation for Science [RSCF 14-14-00313]
  13. Russian Foundation for Basic Research-Helmholtz Joint Research Group [12-04-91322]
  14. Wellcome Trust [WT098051, WT091310]
  15. EU FP7 (EPIGENESYS grant) [257082]
  16. EU FP7 (BLUEPRINT grant) [HEALTH-F5-2011-282510]
  17. National Institute for Health Research [NF-SI-0514-10027] Funding Source: researchfish

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Genome-wide association studies (GWAS) are widely applied to analyze the genetic effects on phenotypes. With the availability of high-throughput technologies for metabolite measurements, GWAS successfully identified loci that affect metabolite concentrations and underlying pathways. In most GWAS, the effect of each SNP on the phenotype is assumed to be additive. Other genetic models such as recessive, dominant, or overdominant were considered only by very few studies. In contrast to this, there are theories that emphasize the relevance of nonadditive effects as a consequence of physiologic mechanisms. This might be especially important for metabolites because these intermediate phenotypes are closer to the underlying pathways than other traits or diseases. In this study we analyzed systematically nonadditive effects on a large panel of serum metabolites and all possible ratios (22,801 total) in a population-based study [Cooperative Health Research in the Region of Augsburg (KORA) F4, N = 1,785]. We applied four different 1-degree-of-freedom (1-df) tests corresponding to an additive, dominant, recessive, and overdominant trait model as well as a genotypic model with two degree-of-freedom (2-df) that allows a more general consideration of genetic effects. Twenty-three loci were found to be genome-wide significantly associated (Bonferroni corrected P <= 2.19 x 10(-12)) with at least one metabolite or ratio. For five of them, we show the evidence of nonadditive effects. We replicated 17 loci, including 3 loci with nonadditive effects, in an independent study (TwinsUK, N = 846). In conclusion, we found that most genetic effects on metabolite concentrations and ratios were indeed additive, which verifies the practice of using the additive model for analyzing SNP effects on metabolites.

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