A Bayesian Hidden Markov Model for Detecting Differentially Methylated Regions

This study adopts a Bayesian approach using the hidden Markov model to account for inherent dependence in read count data. Given the expense of sequencing experiments, few replicates are available for each treatment group. A Bayesian approach that borrows information across an entire chromosome improves the reliability of statistical inferences. The proposed hidden Markov model considers location dependence among genomic loci by incorporating correlation structures as a function of genomic distance. An iterative algorithm based on expectation ‐maximization is designed for parameter estimation. Methylation states are inferred by identifying the optimal sequence of latent states from observations. Real datasets and simulation studies that mimic the real datasets are used to illustrate the reliability and success of the proposed method. T his article is protected by copyright. All rights reserved
Source: Biometrics - Category: Biotechnology Authors: Tags: BIOMETRIC PRACTICE Source Type: research