BMC Bioinformatics (Jun 2012)

On the hypothesis-free testing of metabolite ratios in genome-wide and metabolome-wide association studies

  • Petersen Ann-Kristin,
  • Krumsiek Jan,
  • Wägele Brigitte,
  • Theis Fabian J,
  • Wichmann H-Erich,
  • Gieger Christian,
  • Suhre Karsten

DOI
https://doi.org/10.1186/1471-2105-13-120
Journal volume & issue
Vol. 13, no. 1
p. 120

Abstract

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Abstract Background Genome-wide association studies (GWAS) with metabolic traits and metabolome-wide association studies (MWAS) with traits of biomedical relevance are powerful tools to identify the contribution of genetic, environmental and lifestyle factors to the etiology of complex diseases. Hypothesis-free testing of ratios between all possible metabolite pairs in GWAS and MWAS has proven to be an innovative approach in the discovery of new biologically meaningful associations. The p-gain statistic was introduced as an ad-hoc measure to determine whether a ratio between two metabolite concentrations carries more information than the two corresponding metabolite concentrations alone. So far, only a rule of thumb was applied to determine the significance of the p-gain. Results Here we explore the statistical properties of the p-gain through simulation of its density and by sampling of experimental data. We derive critical values of the p-gain for different levels of correlation between metabolite pairs and show that B/(2*α) is a conservative critical value for the p-gain, where α is the level of significance and B the number of tested metabolite pairs. Conclusions We show that the p-gain is a well defined measure that can be used to identify statistically significant metabolite ratios in association studies and provide a conservative significance cut-off for the p-gain for use in future association studies with metabolic traits.

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