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Detecting Differentially Methylated Promoters in Genes Related to Disease Phenotypes Using R.


ABSTRACT: DNA methylation in gene promoters plays a major role in gene expression regulation, and alterations in methylation patterns have been associated with several diseases. In this context, different software suites and statistical methods have been proposed to analyze differentially methylated positions and regions. Among them, the novel statistical method implemented in the mCSEA R package proposed a new framework to detect subtle, but consistent, methylation differences. Here, we provide an easy-to-use pipeline covering all the necessary steps to detect differentially methylated promoters with mCSEA from Illumina 450K and EPIC methylation BeadChips data. This protocol covers the download of data from public repositories, quality control, data filtering and normalization, estimation of cell type proportions, and statistical analysis. In addition, we show the procedure to compare disease vs. normal phenotypes, obtaining differentially methylated regions including promoters or CpG Islands. The entire protocol is based on R programming language, which can be used in any operating system and does not require advanced programming skills.

SUBMITTER: Martorell-Marugan J 

PROVIDER: S-EPMC8250346 | biostudies-literature | 2021 Jun

REPOSITORIES: biostudies-literature

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Detecting Differentially Methylated Promoters in Genes Related to Disease Phenotypes Using R.

Martorell-Marugán Jordi J   Carmona-Sáez Pedro P  

Bio-protocol 20210605 11


DNA methylation in gene promoters plays a major role in gene expression regulation, and alterations in methylation patterns have been associated with several diseases. In this context, different software suites and statistical methods have been proposed to analyze differentially methylated positions and regions. Among them, the novel statistical method implemented in the mCSEA R package proposed a new framework to detect subtle, but consistent, methylation differences. Here, we provide an easy-t  ...[more]

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