4.7 Article

Identification of differentially methylated loci using wavelet-based functional mixed models

Journal

BIOINFORMATICS
Volume 32, Issue 5, Pages 664-672

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btv659

Keywords

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Funding

  1. National Institutes of Health [R01ES017646, R01CA107304, R01CA160736, R01CA178744]
  2. Johns Hopkins Bloomberg School of Public Health, The THREE study
  3. Maryland Cigarette Restitution Program Research Grant
  4. National Institute of Environmental Health Sciences [1R01ES015445]
  5. Heinz Family Foundation
  6. National Science Foundation [DBI 1550088]

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Motivation: DNA methylation is a key epigenetic modification that can modulate gene expression. Over the past decade, a lot of studies have focused on profiling DNA methylation and investigating its alterations in complex diseases such as cancer. While early studies were mostly restricted to CpG islands or promoter regions, recent findings indicate that many of important DNA methylation changes can occur in other regions and DNA methylation needs to be examined on a genome-wide scale. In this article, we apply the wavelet-based functional mixed model methodology to analyze the high-throughput methylation data for identifying differentially methylated loci across the genome. Contrary to many commonly-used methods that model probes independently, this framework accommodates spatial correlations across the genome through basis function modeling as well as correlations between samples through functional random effects, which allows it to be applied to many different settings and potentially leads to more power in detection of differential methylation. Results: We applied this framework to three different high-dimensional methylation data sets (CpG Shore data, THREE data and NIH Roadmap Epigenomics data), studied previously in other works. A simulation study based on CpG Shore data suggested that in terms of detection of differentially methylated loci, this modeling approach using wavelets outperforms analogous approaches modeling the loci as independent. For the THREE data, the method suggests newly detected regions of differential methylation, which were not reported in the original study.

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