Statistical methods for detecting differentially methylated loci and regions

Mark D. Robinson(SIB Swiss Institute of Bioinformatics), Abdullah Kahraman(University of Zurich), Charity W. Law(University of Zurich), Helen Lindsay(University of Zurich), Małgorzata Nowicka(SIB Swiss Institute of Bioinformatics), Lukas M. Weber(University of Zurich), Xiaobei Zhou(University of Zurich)
Frontiers in Genetics
September 16, 2014
Cited by 132Open Access
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Abstract

DNA methylation, the reversible addition of methyl groups at CpG dinucleotides, represents an important regulatory layer associated with gene expression. Changed methylation status has been noted across diverse pathological states, including cancer. The rapid development and uptake of microarrays and large scale DNA sequencing has prompted an explosion of data analytic methods for processing and discovering changes in DNA methylation across varied data types. In this mini-review, we present a compact and accessible discussion of many of the salient challenges, such as experimental design, statistical methods for differential methylation detection, critical considerations such as cell type composition and the potential confounding that can arise from batch effects. From a statistical perspective, our main interests include the use of empirical Bayes or hierarchical models, which have proved immensely powerful in genomics, and the procedures by which false discovery control is achieved.


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