articleBMC BioinformaticsFeb 13, 2017GOLD OA

A comparison of reference-based algorithms for correcting cell-type heterogeneity in Epigenome-Wide Association Studies

Chinese Academy of Sciences · University College London · +1 more institution

PubMed
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Abstract

Background

Intra-sample cellular heterogeneity presents numerous challenges to the identification of biomarkers in large Epigenome-Wide Association Studies (EWAS). While a number of reference-based deconvolution algorithms have emerged, their potential remains underexplored and a comparative evaluation of these algorithms beyond tissues such as blood is still lacking.

Results

Here we present a novel framework for reference-based inference, which leverages cell-type specific DNAse Hypersensitive Site (DHS) information from the NIH Epigenomics Roadmap to construct an improved reference DNA methylation database. We show that this leads to a marginal but statistically significant improvement of cell-count estimates in whole blood as well as in mixtures involving epithelial cell-types. Using this framework we compare a widely used state-of-the-art reference-based algorithm (called constrained projection) to two non-constrained approaches including CIBERSORT and a method based on robust partial correlations. We conclude that the widely-used constrained projection technique may not always be optimal. Instead, we find that the method based on robust partial correlations is generally more robust across a range of different tissue types and for realistic noise levels. We call the combined algorithm which uses DHS data and robust partial correlations for inference, EpiDISH (Epigenetic Dissection of Intra-Sample Heterogeneity). Finally, we demonstrate the added value of EpiDISH in an EWAS of smoking.

Citation impact

623
total citations
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12.33
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100%
References
46
Citations per year

Authors

4

Topics & keywords

Keywords
  • Epigenome
  • Computer science
  • Inference
  • Deconvolution
  • Algorithm
  • Epigenomics
  • DNA methylation
  • Computational biology
UN Sustainable Development Goals
  • Good health and well-being
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