BMC Proceedings (Sep 2018)

Evaluating the performance of gene-based tests of genetic association when testing for association between methylation and change in triglyceride levels at GAW20

  • Jason Vander Woude,
  • Jordan Huisman,
  • Lucas Vander Berg,
  • Jenna Veenstra,
  • Abbey Bos,
  • Anya Kalsbeek,
  • Karissa Koster,
  • Nathan Ryder,
  • Nathan L. Tintle

DOI
https://doi.org/10.1186/s12919-018-0124-y
Journal volume & issue
Vol. 12, no. S9
pp. 73 – 77

Abstract

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Abstract Although methylation data continues to rise in popularity, much is still unknown about how to best analyze methylation data in genome-wide analysis contexts. Given continuing interest in gene-based tests for next-generation sequencing data, we evaluated the performance of novel gene-based test statistics on simulated data from GAW20. Our analysis suggests that most of the gene-based tests are detecting real signals and maintaining the Type I error rate. The minimum p value and threshold-based tests performed well compared to single-marker tests in many cases, especially when the number of variants was relatively large with few true causal variants in the set.