A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.

Pluripotent embryonic stem cells are of paramount importance for biomedical sciences because of their innate ability for self-renewal and differentiation into all major cell lines. The fateful decision to exit or remain in the pluripotent state is regulated by complex genetic regulatory networks. Th...

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Main Authors: Yen Ting Lin, Peter G Hufton, Esther J Lee, Davit A Potoyan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-02-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1006000
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spelling doaj-9f59ddac26584639a154961180bf6f272021-06-19T05:32:02ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-02-01142e100600010.1371/journal.pcbi.1006000A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.Yen Ting LinPeter G HuftonEsther J LeeDavit A PotoyanPluripotent embryonic stem cells are of paramount importance for biomedical sciences because of their innate ability for self-renewal and differentiation into all major cell lines. The fateful decision to exit or remain in the pluripotent state is regulated by complex genetic regulatory networks. The rapid growth of single-cell sequencing data has greatly stimulated applications of statistical and machine learning methods for inferring topologies of pluripotency regulating genetic networks. The inferred network topologies, however, often only encode Boolean information while remaining silent about the roles of dynamics and molecular stochasticity inherent in gene expression. Herein we develop a framework for systematically extending Boolean-level network topologies into higher resolution models of networks which explicitly account for the promoter architectures and gene state switching dynamics. We show the framework to be useful for disentangling the various contributions that gene switching, external signaling, and network topology make to the global heterogeneity and dynamics of transcription factor populations. We find the pluripotent state of the network to be a steady state which is robust to global variations of gene switching rates which we argue are a good proxy for epigenetic states of individual promoters. The temporal dynamics of exiting the pluripotent state, on the other hand, is significantly influenced by the rates of genetic switching which makes cells more responsive to changes in extracellular signals.https://doi.org/10.1371/journal.pcbi.1006000
collection DOAJ
language English
format Article
sources DOAJ
author Yen Ting Lin
Peter G Hufton
Esther J Lee
Davit A Potoyan
spellingShingle Yen Ting Lin
Peter G Hufton
Esther J Lee
Davit A Potoyan
A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
PLoS Computational Biology
author_facet Yen Ting Lin
Peter G Hufton
Esther J Lee
Davit A Potoyan
author_sort Yen Ting Lin
title A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
title_short A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
title_full A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
title_fullStr A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
title_full_unstemmed A stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
title_sort stochastic and dynamical view of pluripotency in mouse embryonic stem cells.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2018-02-01
description Pluripotent embryonic stem cells are of paramount importance for biomedical sciences because of their innate ability for self-renewal and differentiation into all major cell lines. The fateful decision to exit or remain in the pluripotent state is regulated by complex genetic regulatory networks. The rapid growth of single-cell sequencing data has greatly stimulated applications of statistical and machine learning methods for inferring topologies of pluripotency regulating genetic networks. The inferred network topologies, however, often only encode Boolean information while remaining silent about the roles of dynamics and molecular stochasticity inherent in gene expression. Herein we develop a framework for systematically extending Boolean-level network topologies into higher resolution models of networks which explicitly account for the promoter architectures and gene state switching dynamics. We show the framework to be useful for disentangling the various contributions that gene switching, external signaling, and network topology make to the global heterogeneity and dynamics of transcription factor populations. We find the pluripotent state of the network to be a steady state which is robust to global variations of gene switching rates which we argue are a good proxy for epigenetic states of individual promoters. The temporal dynamics of exiting the pluripotent state, on the other hand, is significantly influenced by the rates of genetic switching which makes cells more responsive to changes in extracellular signals.
url https://doi.org/10.1371/journal.pcbi.1006000
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