The effect of phenotypic outliers and non-normality on rare-variant association testing

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Abstract

Rare-variant association studies (RVAS) have made important contributions to human complex trait genetics. These studies rely on specialized statistical methods for analyzing rare-variant associations, both individually and in aggregate. We investigated the impact that phenotypic outliers and non-normality have on the performance of rare-variant association testing procedures. Ignoring outliers or non-normality can significantly inflate Type I error rates. We found that rank-based inverse normal transformation (INT) and trait winsorisation were both effective at maintaining Type I error control without sacrificing power in the presence of outliers. INT was the optimal method for non-normally distributed traits. For RVAS of quantitative traits with outliers or non-normality, we recommend using INT to transform phenotypic values before association testing.

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Auer, P. L., Reiner, A. P., & Leal, S. M. (2016). The effect of phenotypic outliers and non-normality on rare-variant association testing. European Journal of Human Genetics, 24(8), 1188–1194. https://doi.org/10.1038/ejhg.2015.270

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