DMseg: a Python algorithm for de novo detection of differentially or variably methylated regions
Xiaoyu Wang, Ming Yu, William Grady, Ziding Feng, Wei Sun, James Y Dai

TL;DR
DMseg is a Python tool that accurately detects differentially methylated and variably methylated regions in methylome data, outperforming existing methods in power and error control.
Contribution
It introduces a novel algorithm for simultaneous detection of DMRs and VMRs with improved statistical accuracy and efficiency.
Findings
DMseg demonstrates superior power over Bumphunter in simulations.
It provides accurate control of type I error in genome-wide analysis.
Application reveals biologically relevant methylation regions.
Abstract
Detecting and assessing statistical significance of differentially methylated regions (DMRs) is a fundamental task in methylome association studies. While the average differential methylation in different phenotype groups has been the inferential focus, methylation changes in chromosomal regions may also present as differential variability, i.e., variably methylated regions (VMRs). Testing statistical significance of regional differential methylation is a challenging problem, and existing algorithms do not provide accurate type I error control for genome-wide DMR or VMR analysis. No algorithm has been publicly available for detecting VMRs. We propose DMseg, a Python algorithm with efficient DMR/VMR detection and significance assessment for array-based methylome data, and compare its performance to Bumphunter, a popular existing algorithm. Operationally, DMseg searches for DMRs or VMRs…
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Taxonomy
TopicsEpigenetics and DNA Methylation · Genetic Associations and Epidemiology
