1. Charting differentially methylated regions in cancer with Rocker-meth.
- Author
-
Benelli M, Franceschini GM, Magi A, Romagnoli D, Biagioni C, Migliaccio I, Malorni L, and Demichelis F
- Subjects
- Humans, Markov Chains, Computational Biology methods, DNA Methylation, Epigenesis, Genetic, Neoplasms genetics
- Abstract
Differentially DNA methylated regions (DMRs) inform on the role of epigenetic changes in cancer. We present Rocker-meth, a new computational method exploiting a heterogeneous hidden Markov model to detect DMRs across multiple experimental platforms. Through an extensive comparative study, we first demonstrate Rocker-meth excellent performance on synthetic data. Its application to more than 6,000 methylation profiles across 14 tumor types provides a comprehensive catalog of tumor type-specific and shared DMRs, and agnostically identifies cancer-related partially methylated domains (PMD). In depth integrative analysis including orthogonal omics shows the enhanced ability of Rocker-meth in recapitulating known associations, further uncovering the pan-cancer relationship between DNA hypermethylation and transcription factor deregulation depending on the baseline chromatin state. Finally, we demonstrate the utility of the catalog for the study of colorectal cancer single-cell DNA-methylation data., (© 2021. The Author(s).)
- Published
- 2021
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