Cargando…

The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks

Reconstructing cellular signaling networks and understanding how they work are major endeavors in cell biology. The scale and complexity of these networks, however, render their analysis using experimental biology approaches alone very challenging. As a result, computational methods have been develo...

Descripción completa

Detalles Bibliográficos
Autores principales: Ruths, Derek, Muller, Melissa, Tseng, Jen-Te, Nakhleh, Luay, Ram, Prahlad T.
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2265486/
https://www.ncbi.nlm.nih.gov/pubmed/18463702
http://dx.doi.org/10.1371/journal.pcbi.1000005
_version_ 1782151485375643648
author Ruths, Derek
Muller, Melissa
Tseng, Jen-Te
Nakhleh, Luay
Ram, Prahlad T.
author_facet Ruths, Derek
Muller, Melissa
Tseng, Jen-Te
Nakhleh, Luay
Ram, Prahlad T.
author_sort Ruths, Derek
collection PubMed
description Reconstructing cellular signaling networks and understanding how they work are major endeavors in cell biology. The scale and complexity of these networks, however, render their analysis using experimental biology approaches alone very challenging. As a result, computational methods have been developed and combined with experimental biology approaches, producing powerful tools for the analysis of these networks. These computational methods mostly fall on either end of a spectrum of model parameterization. On one end is a class of structural network analysis methods; these typically use the network connectivity alone to generate hypotheses about global properties. On the other end is a class of dynamic network analysis methods; these use, in addition to the connectivity, kinetic parameters of the biochemical reactions to predict the network's dynamic behavior. These predictions provide detailed insights into the properties that determine aspects of the network's structure and behavior. However, the difficulty of obtaining numerical values of kinetic parameters is widely recognized to limit the applicability of this latter class of methods. Several researchers have observed that the connectivity of a network alone can provide significant insights into its dynamics. Motivated by this fundamental observation, we present the signaling Petri net, a non-parametric model of cellular signaling networks, and the signaling Petri net-based simulator, a Petri net execution strategy for characterizing the dynamics of signal flow through a signaling network using token distribution and sampling. The result is a very fast method, which can analyze large-scale networks, and provide insights into the trends of molecules' activity-levels in response to an external stimulus, based solely on the network's connectivity. We have implemented the signaling Petri net-based simulator in the PathwayOracle toolkit, which is publicly available at http://bioinfo.cs.rice.edu/pathwayoracle. Using this method, we studied a MAPK1,2 and AKT signaling network downstream from EGFR in two breast tumor cell lines. We analyzed, both experimentally and computationally, the activity level of several molecules in response to a targeted manipulation of TSC2 and mTOR-Raptor. The results from our method agreed with experimental results in greater than 90% of the cases considered, and in those where they did not agree, our approach provided valuable insights into discrepancies between known network connectivities and experimental observations.
format Text
id pubmed-2265486
institution National Center for Biotechnology Information
language English
publishDate 2008
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-22654862008-03-08 The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks Ruths, Derek Muller, Melissa Tseng, Jen-Te Nakhleh, Luay Ram, Prahlad T. PLoS Comput Biol Research Article Reconstructing cellular signaling networks and understanding how they work are major endeavors in cell biology. The scale and complexity of these networks, however, render their analysis using experimental biology approaches alone very challenging. As a result, computational methods have been developed and combined with experimental biology approaches, producing powerful tools for the analysis of these networks. These computational methods mostly fall on either end of a spectrum of model parameterization. On one end is a class of structural network analysis methods; these typically use the network connectivity alone to generate hypotheses about global properties. On the other end is a class of dynamic network analysis methods; these use, in addition to the connectivity, kinetic parameters of the biochemical reactions to predict the network's dynamic behavior. These predictions provide detailed insights into the properties that determine aspects of the network's structure and behavior. However, the difficulty of obtaining numerical values of kinetic parameters is widely recognized to limit the applicability of this latter class of methods. Several researchers have observed that the connectivity of a network alone can provide significant insights into its dynamics. Motivated by this fundamental observation, we present the signaling Petri net, a non-parametric model of cellular signaling networks, and the signaling Petri net-based simulator, a Petri net execution strategy for characterizing the dynamics of signal flow through a signaling network using token distribution and sampling. The result is a very fast method, which can analyze large-scale networks, and provide insights into the trends of molecules' activity-levels in response to an external stimulus, based solely on the network's connectivity. We have implemented the signaling Petri net-based simulator in the PathwayOracle toolkit, which is publicly available at http://bioinfo.cs.rice.edu/pathwayoracle. Using this method, we studied a MAPK1,2 and AKT signaling network downstream from EGFR in two breast tumor cell lines. We analyzed, both experimentally and computationally, the activity level of several molecules in response to a targeted manipulation of TSC2 and mTOR-Raptor. The results from our method agreed with experimental results in greater than 90% of the cases considered, and in those where they did not agree, our approach provided valuable insights into discrepancies between known network connectivities and experimental observations. Public Library of Science 2008-02-29 /pmc/articles/PMC2265486/ /pubmed/18463702 http://dx.doi.org/10.1371/journal.pcbi.1000005 Text en Ruths et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Ruths, Derek
Muller, Melissa
Tseng, Jen-Te
Nakhleh, Luay
Ram, Prahlad T.
The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks
title The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks
title_full The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks
title_fullStr The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks
title_full_unstemmed The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks
title_short The Signaling Petri Net-Based Simulator: A Non-Parametric Strategy for Characterizing the Dynamics of Cell-Specific Signaling Networks
title_sort signaling petri net-based simulator: a non-parametric strategy for characterizing the dynamics of cell-specific signaling networks
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2265486/
https://www.ncbi.nlm.nih.gov/pubmed/18463702
http://dx.doi.org/10.1371/journal.pcbi.1000005
work_keys_str_mv AT ruthsderek thesignalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT mullermelissa thesignalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT tsengjente thesignalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT nakhlehluay thesignalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT ramprahladt thesignalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT ruthsderek signalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT mullermelissa signalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT tsengjente signalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT nakhlehluay signalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks
AT ramprahladt signalingpetrinetbasedsimulatoranonparametricstrategyforcharacterizingthedynamicsofcellspecificsignalingnetworks