4.7 Article

A-clustering: a novel method for the detection of co-regulated methylation regions, and regions associated with exposure

Journal

BIOINFORMATICS
Volume 29, Issue 22, Pages 2884-2891

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btt498

Keywords

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Funding

  1. NIH [1RC1ES018461-01]
  2. National Institutes of Health, National Institute of Environmental Health Sciences [Z01 ES049030]
  3. National Cancer Institute [Z01 CP044008]
  4. National Institute of Environmental Health Sciences [R01-ES013067, R01-ES020268]

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Motivation: DNA methylation is a heritable modifiable chemical process that affects gene transcription and is associated with other molecular markers (e. g. gene expression) and biomarkers (e. g. cancer or other diseases). Current technology measures methylation in hundred of thousands, or millions of CpG sites throughout the genome. It is evident that neighboring CpG sites are often highly correlated with each other, and current literature suggests that clusters of adjacent CpG sites are co-regulated. Results: We develop the Adjacent Site Clustering (A-clustering) algorithm to detect sets of neighboring CpG sites that are correlated with each other. To detect methylation regions associated with exposure, we propose an analysis pipeline for high-dimensional methylation data in which CpG sites within regions identified by A-clustering are modeled as multivariate responses to environmental exposure using a generalized estimating equation approach that assumes exposure equally affects all sites in the cluster. We develop a correlation preserving simulation scheme, and study the proposed methodology via simulations. We study the clusters detected by the algorithm on high dimensional dataset of peripheral blood methylation of pesticide applicators.

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