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The Epigenetic Pacemaker: modeling epigenetic states under an evolutionary framework

Colin Farrell, Sagi Snir, Matteo Pellegrini

2020Bioinformatics32 citationsDOIOpen Access PDF

Abstract

SUMMARY: Epigenetic rates of change, much as evolutionary mutation rate along a lineage, vary during lifetime. Accurate estimation of the epigenetic state has vast medical and biological implications. To account for these non-linear epigenetic changes with age, we recently developed a formalism inspired by the Pacemaker model of evolution that accounts for varying rates of mutations with time. Here, we present a python implementation of the Epigenetic Pacemaker (EPM), a conditional expectation maximization algorithm that estimates epigenetic landscapes and the state of individuals and may be used to study non-linear epigenetic aging. AVAILABILITY AND IMPLEMENTATION: The EPM is available at https://pypi.org/project/EpigeneticPacemaker/ under the MIT license. The EPM is compatible with python version 3.6 and above.

Topics & Concepts

EpigeneticsPython (programming language)Computer scienceGeneticsBiologyComputational biologyGeneProgramming languageEpigenetics and DNA MethylationGenetics, Aging, and Longevity in Model OrganismsGenomics and Chromatin Dynamics
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