Biomolecules (May 2024)

Identifying Differential Methylation in Cancer Epigenetics via a Bayesian Functional Regression Model

  • Farhad Shokoohi,
  • David A. Stephens,
  • Celia M. T. Greenwood

DOI
https://doi.org/10.3390/biom14060639
Journal volume & issue
Vol. 14, no. 6
p. 639

Abstract

Read online

DNA methylation plays an essential role in regulating gene activity, modulating disease risk, and determining treatment response. We can obtain insight into methylation patterns at a single-nucleotide level via next-generation sequencing technologies. However, complex features inherent in the data obtained via these technologies pose challenges beyond the typical big data problems. Identifying differentially methylated cytosines (dmc) or regions is one such challenge. We have developed DMCFB, an efficient dmc identification method based on Bayesian functional regression, to tackle these challenges. Using simulations, we establish that DMCFB outperforms current methods and results in better smoothing and efficient imputation. We analyzed a dataset of patients with acute promyelocytic leukemia and control samples. With DMCFB, we discovered many new dmcs and, more importantly, exhibited enhanced consistency of differential methylation within islands and their adjacent shores. Additionally, we detected differential methylation at more of the binding sites of the fused gene involved in this cancer.

Keywords