A method for the generation of standardized qualitative dynamical systems of regulatory networks

<p>Abstract</p> <p>Background</p> <p>Modeling of molecular networks is necessary to understand their dynamical properties. While a wealth of information on molecular connectivity is available, there are still relatively few data regarding the precise stoichiometry and k...

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Main Authors: Xenarios Ioannis, Mendoza Luis
Format: Article
Language:English
Published: BMC 2006-03-01
Series:Theoretical Biology and Medical Modelling
Online Access:http://www.tbiomed.com/content/3/1/13
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spelling doaj-7eea8016587c45bf898566d1f23b2fe32020-11-25T01:32:31ZengBMCTheoretical Biology and Medical Modelling1742-46822006-03-01311310.1186/1742-4682-3-13A method for the generation of standardized qualitative dynamical systems of regulatory networksXenarios IoannisMendoza Luis<p>Abstract</p> <p>Background</p> <p>Modeling of molecular networks is necessary to understand their dynamical properties. While a wealth of information on molecular connectivity is available, there are still relatively few data regarding the precise stoichiometry and kinetics of the biochemical reactions underlying most molecular networks. This imbalance has limited the development of dynamical models of biological networks to a small number of well-characterized systems. To overcome this problem, we wanted to develop a methodology that would systematically create dynamical models of regulatory networks where the flow of information is known but the biochemical reactions are not. There are already diverse methodologies for modeling regulatory networks, but we aimed to create a method that could be completely standardized, <it>i.e. </it>independent of the network under study, so as to use it systematically.</p> <p>Results</p> <p>We developed a set of equations that can be used to translate the graph of any regulatory network into a continuous dynamical system. Furthermore, it is also possible to locate its stable steady states. The method is based on the construction of two dynamical systems for a given network, one discrete and one continuous. The stable steady states of the discrete system can be found analytically, so they are used to locate the stable steady states of the continuous system numerically. To provide an example of the applicability of the method, we used it to model the regulatory network controlling T helper cell differentiation.</p> <p>Conclusion</p> <p>The proposed equations have a form that permit any regulatory network to be translated into a continuous dynamical system, and also find its steady stable states. We showed that by applying the method to the T helper regulatory network it is possible to find its known states of activation, which correspond the molecular profiles observed in the precursor and effector cell types.</p> http://www.tbiomed.com/content/3/1/13
collection DOAJ
language English
format Article
sources DOAJ
author Xenarios Ioannis
Mendoza Luis
spellingShingle Xenarios Ioannis
Mendoza Luis
A method for the generation of standardized qualitative dynamical systems of regulatory networks
Theoretical Biology and Medical Modelling
author_facet Xenarios Ioannis
Mendoza Luis
author_sort Xenarios Ioannis
title A method for the generation of standardized qualitative dynamical systems of regulatory networks
title_short A method for the generation of standardized qualitative dynamical systems of regulatory networks
title_full A method for the generation of standardized qualitative dynamical systems of regulatory networks
title_fullStr A method for the generation of standardized qualitative dynamical systems of regulatory networks
title_full_unstemmed A method for the generation of standardized qualitative dynamical systems of regulatory networks
title_sort method for the generation of standardized qualitative dynamical systems of regulatory networks
publisher BMC
series Theoretical Biology and Medical Modelling
issn 1742-4682
publishDate 2006-03-01
description <p>Abstract</p> <p>Background</p> <p>Modeling of molecular networks is necessary to understand their dynamical properties. While a wealth of information on molecular connectivity is available, there are still relatively few data regarding the precise stoichiometry and kinetics of the biochemical reactions underlying most molecular networks. This imbalance has limited the development of dynamical models of biological networks to a small number of well-characterized systems. To overcome this problem, we wanted to develop a methodology that would systematically create dynamical models of regulatory networks where the flow of information is known but the biochemical reactions are not. There are already diverse methodologies for modeling regulatory networks, but we aimed to create a method that could be completely standardized, <it>i.e. </it>independent of the network under study, so as to use it systematically.</p> <p>Results</p> <p>We developed a set of equations that can be used to translate the graph of any regulatory network into a continuous dynamical system. Furthermore, it is also possible to locate its stable steady states. The method is based on the construction of two dynamical systems for a given network, one discrete and one continuous. The stable steady states of the discrete system can be found analytically, so they are used to locate the stable steady states of the continuous system numerically. To provide an example of the applicability of the method, we used it to model the regulatory network controlling T helper cell differentiation.</p> <p>Conclusion</p> <p>The proposed equations have a form that permit any regulatory network to be translated into a continuous dynamical system, and also find its steady stable states. We showed that by applying the method to the T helper regulatory network it is possible to find its known states of activation, which correspond the molecular profiles observed in the precursor and effector cell types.</p>
url http://www.tbiomed.com/content/3/1/13
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