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Data-driven selection and parameter estimation for DNA methylation mathematical models

Larson, Karen; Zagkos, Loukas; Mc Auley, Mark; Roberts, Jason; Kavallaris, Nikos I.; Matzavinos, Anastasios

Authors

Karen Larson

Loukas Zagkos

Jason Roberts

Nikos I. Kavallaris

Anastasios Matzavinos



Abstract

Epigenetics is coming to the fore as a key process which underpins health. In particular emerging experimental evidence has associated alterations to DNA methylation status with healthspan and aging. Mammalian DNA methylation status is maintained by an intricate array of biochemical and molecular processes. It can be argued changes to these fundamental cellular processes ultimately drive the formation of aberrant DNA methylation patterns, which are a hallmark of diseases, such as cancer, Alzheimer’s disease and cardiovascular disease. In recent years mathematical models have been used as effective tools to help advance our understanding of the dynamics which underpin DNA methylation. In this paper we present linear and nonlinear models which encapsulate the dynamics of the molecular mechanisms which define DNA methylation. Applying a recently developed Bayesian algorithm for parameter estimation and model selection, we are able to estimate distributions of parameters which include nominal parameter values. Using limited noisy observations, the method also identified which methylation model the observations originated from, signaling that our method has practical applications in identifying what models best match the biological data for DNA methylation.

Journal Article Type Article
Acceptance Date Jan 8, 2019
Online Publication Date Jan 10, 2019
Publication Date 2019-04
Deposit Date Feb 19, 2025
Journal Journal of Theoretical Biology
Print ISSN 0022-5193
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 467
Pages 87-99
DOI https://doi.org/10.1016/j.jtbi.2019.01.012