Use of principal components to aggregate rare variants in case-control and family-based association studies in the presence of multiple covariates

  • Kazma R
  • Hoffmann T
  • Witte J
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Abstract

Rare variants may help to explain some of the missing heritability of complex diseases. Technological advances in next-generation sequencing give us the opportunity to test this hypothesis. We propose two new methods (one for case-control studies and one for family-based studies) that combine aggregated rare variants and common variants located within a region through principal components analysis and allow for covariate adjustment. We analyzed 200 replicates consisting of 209 case subjects and 488 control subjects and compared the results to weight-based and step-up aggregation methods. The principal components and collapsing method showed an association between the gene FLT1 and the quantitative trait Q1 ( P <10 −30 ) in a fraction of the computation time of the other methods. The proposed family-based test has inconclusive results. The two methods provide a fast way to analyze simultaneously rare and common variants at the gene level while adjusting for covariates. However, further evaluation of the statistical efficiency of this approach is warranted.

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Kazma, R., Hoffmann, T. J., & Witte, J. S. (2011). Use of principal components to aggregate rare variants in case-control and family-based association studies in the presence of multiple covariates. BMC Proceedings, 5(S9). https://doi.org/10.1186/1753-6561-5-s9-s29

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