A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.

A major challenge in systems biology is to develop a detailed dynamic understanding of the functions and behaviors in a particular cellular system, which depends on the elements and their inter-relationships in a specific network. Computational modeling plays an integral part in the study of network...

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Main Authors: Ming Wu, Xuerui Yang, Christina Chan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-12-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2779448?pdf=render
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spelling doaj-f003d50ab13247848ceeeccace4cbaaf2020-11-25T02:05:17ZengPublic Library of Science (PLoS)PLoS ONE1932-62032009-12-01412e804010.1371/journal.pone.0008040A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.Ming WuXuerui YangChristina ChanA major challenge in systems biology is to develop a detailed dynamic understanding of the functions and behaviors in a particular cellular system, which depends on the elements and their inter-relationships in a specific network. Computational modeling plays an integral part in the study of network dynamics and uncovering the underlying mechanisms. Here we proposed a systematic approach that incorporates discrete dynamic modeling and experimental data to reconstruct a phenotype-specific network of cell signaling. A dynamic analysis of the insulin signaling system in liver cells provides a proof-of-concept application of the proposed methodology. Our group recently identified that double-stranded RNA-dependent protein kinase (PKR) plays an important role in the insulin signaling network. The dynamic behavior of the insulin signaling network is tuned by a variety of feedback pathways, many of which have the potential to cross talk with PKR. Given the complexity of insulin signaling, it is inefficient to experimentally test all possible interactions in the network to determine which pathways are functioning in our cell system. Our discrete dynamic model provides an in silico model framework that integrates potential interactions and assesses the contributions of the various interactions on the dynamic behavior of the signaling network. Simulations with the model generated testable hypothesis on the response of the network upon perturbation, which were experimentally evaluated to identify the pathways that function in our particular liver cell system. The modeling in combination with the experimental results enhanced our understanding of the insulin signaling dynamics and aided in generating a context-specific signaling network.http://europepmc.org/articles/PMC2779448?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ming Wu
Xuerui Yang
Christina Chan
spellingShingle Ming Wu
Xuerui Yang
Christina Chan
A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.
PLoS ONE
author_facet Ming Wu
Xuerui Yang
Christina Chan
author_sort Ming Wu
title A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.
title_short A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.
title_full A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.
title_fullStr A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.
title_full_unstemmed A dynamic analysis of IRS-PKR signaling in liver cells: a discrete modeling approach.
title_sort dynamic analysis of irs-pkr signaling in liver cells: a discrete modeling approach.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2009-12-01
description A major challenge in systems biology is to develop a detailed dynamic understanding of the functions and behaviors in a particular cellular system, which depends on the elements and their inter-relationships in a specific network. Computational modeling plays an integral part in the study of network dynamics and uncovering the underlying mechanisms. Here we proposed a systematic approach that incorporates discrete dynamic modeling and experimental data to reconstruct a phenotype-specific network of cell signaling. A dynamic analysis of the insulin signaling system in liver cells provides a proof-of-concept application of the proposed methodology. Our group recently identified that double-stranded RNA-dependent protein kinase (PKR) plays an important role in the insulin signaling network. The dynamic behavior of the insulin signaling network is tuned by a variety of feedback pathways, many of which have the potential to cross talk with PKR. Given the complexity of insulin signaling, it is inefficient to experimentally test all possible interactions in the network to determine which pathways are functioning in our cell system. Our discrete dynamic model provides an in silico model framework that integrates potential interactions and assesses the contributions of the various interactions on the dynamic behavior of the signaling network. Simulations with the model generated testable hypothesis on the response of the network upon perturbation, which were experimentally evaluated to identify the pathways that function in our particular liver cell system. The modeling in combination with the experimental results enhanced our understanding of the insulin signaling dynamics and aided in generating a context-specific signaling network.
url http://europepmc.org/articles/PMC2779448?pdf=render
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