Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.

The signaling system is a fundamental part of the cell, as it regulates essential functions including growth, differentiation, protein synthesis, and apoptosis. A malfunction in this subsystem can disrupt the cell significantly, and is believed to be involved in certain diseases, with cancer being a...

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Main Authors: Dániel Kondor, Gábor Vattay
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23520476/?tool=EBI
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spelling doaj-87f4fcdc00cd4c1ba543f3f6bdb35ea12021-03-03T23:37:03ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0183e5765310.1371/journal.pone.0057653Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.Dániel KondorGábor VattayThe signaling system is a fundamental part of the cell, as it regulates essential functions including growth, differentiation, protein synthesis, and apoptosis. A malfunction in this subsystem can disrupt the cell significantly, and is believed to be involved in certain diseases, with cancer being a very important example. While the information available about intracellular signaling networks is constantly growing, and the network topology is actively being analyzed, the modeling of the dynamics of such a system faces difficulties due to the vast number of parameters, which can prove hard to estimate correctly. As the functioning of the signaling system depends on the parameters in a complex way, being able to make general statements based solely on the network topology could be especially appealing. We study a general kinetic model of the signaling system, giving results for the asymptotic behavior of the system in the case of a network with only activatory interactions. We also investigate the possible generalization of our results for the case of a more general model including inhibitory interactions too. We find that feedback cycles made up entirely of activatory interactions (which we call dynamically positive) are especially important, as their properties determine whether the system has a stable signal-off state, which is desirable in many situations to avoid autoactivation due to a noisy environment. To test our results, we investigate the network topology in the Signalink database, and find that the human signaling network indeed has only significantly few dynamically positive cycles, which agrees well with our theoretical arguments.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23520476/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Dániel Kondor
Gábor Vattay
spellingShingle Dániel Kondor
Gábor Vattay
Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
PLoS ONE
author_facet Dániel Kondor
Gábor Vattay
author_sort Dániel Kondor
title Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
title_short Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
title_full Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
title_fullStr Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
title_full_unstemmed Dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
title_sort dynamics and structure in cell signaling networks: off-state stability and dynamically positive cycles.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description The signaling system is a fundamental part of the cell, as it regulates essential functions including growth, differentiation, protein synthesis, and apoptosis. A malfunction in this subsystem can disrupt the cell significantly, and is believed to be involved in certain diseases, with cancer being a very important example. While the information available about intracellular signaling networks is constantly growing, and the network topology is actively being analyzed, the modeling of the dynamics of such a system faces difficulties due to the vast number of parameters, which can prove hard to estimate correctly. As the functioning of the signaling system depends on the parameters in a complex way, being able to make general statements based solely on the network topology could be especially appealing. We study a general kinetic model of the signaling system, giving results for the asymptotic behavior of the system in the case of a network with only activatory interactions. We also investigate the possible generalization of our results for the case of a more general model including inhibitory interactions too. We find that feedback cycles made up entirely of activatory interactions (which we call dynamically positive) are especially important, as their properties determine whether the system has a stable signal-off state, which is desirable in many situations to avoid autoactivation due to a noisy environment. To test our results, we investigate the network topology in the Signalink database, and find that the human signaling network indeed has only significantly few dynamically positive cycles, which agrees well with our theoretical arguments.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23520476/?tool=EBI
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AT gaborvattay dynamicsandstructureincellsignalingnetworksoffstatestabilityanddynamicallypositivecycles
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