AI Article Synopsis

  • Gene-environment interactions (GxE) play a key role in complex traits, but traditional tests struggle with low statistical power and multiple testing issues.
  • The authors introduce a new statistical test that uses bagging to create genetic risk scores (GRS) without reducing the sample size, aiming to improve the detection of GxE interactions.
  • Their simulation results demonstrate that this method, combined with random forests, significantly enhances statistical power while minimizing errors, with real-world data suggesting a link between air pollution and rheumatoid arthritis.

Article Abstract

Gene-environment (GxE) interactions are an important and sophisticated component in the manifestation of complex phenotypes. Simple univariate tests lack statistical power due to the need for multiple testing adjustment and not incorporating potential interplay between several genetic loci. Approaches based on internally constructed genetic risk scores (GRS) require the partitioning of the available sample into training and testing data sets, thus, lowering the effective sample size for testing the GxE interaction itself. To overcome these issues, we propose a statistical test that employs bagging (bootstrap aggregating) in the GRS construction step and utilizes its out-of-bag prediction mechanism. This approach has the key advantage that the full available data set can be used for both constructing the GRS and testing the GxE interaction. To also incorporate interactions between genetic loci, we, furthermore, investigate if using random forests as the GRS construction method in GxE interaction testing further increases the statistical power. In a simulation study, we show that both novel procedures lead to a higher statistical power for detecting GxE interactions, while still controlling the type I error. The random-forests-based test outperforms a bagging-based test that uses the elastic net as its base learner in most scenarios. An application of the testing procedures to a real data set from a German cohort study suggests that there might be a GxE interaction involving exposure to air pollution regarding rheumatoid arthritis.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9845231PMC
http://dx.doi.org/10.1038/s41598-023-28172-4DOI Listing

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