Gene set enrichment analysis for genome-wide DNA methylation data

被引:0
作者
Jovana Maksimovic
Alicia Oshlack
Belinda Phipson
机构
[1] Peter MacCallum Cancer Centre,Department of Pediatrics
[2] University of Melbourne,School of Biosciences
[3] Murdoch Children’s Research Institute,Sir Peter MacCallum Department of Oncology
[4] University of Melbourne,undefined
[5] University of Melbourne,undefined
来源
Genome Biology | / 22卷
关键词
DNA methylation; Gene set analysis; Differential methylation; Statistical analysis;
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摘要
DNA methylation is one of the most commonly studied epigenetic marks, due to its role in disease and development. Illumina methylation arrays have been extensively used to measure methylation across the human genome. Methylation array analysis has primarily focused on preprocessing, normalization, and identification of differentially methylated CpGs and regions. GOmeth and GOregion are new methods for performing unbiased gene set testing following differential methylation analysis. Benchmarking analyses demonstrate GOmeth outperforms other approaches, and GOregion is the first method for gene set testing of differentially methylated regions. Both methods are publicly available in the missMethyl Bioconductor R package.
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