Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.

We present a novel formulation for biochemical reaction networks in the context of protein signal transduction. The model consists of input-output transfer functions, which are derived from differential equations, using stable equilibria. We select a set of "source" species, which are inte...

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Main Author: Gabriele Scheler
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3565992?pdf=render
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spelling doaj-dd5f397c4a444a8ea34f9b4b4c4c7ead2020-11-25T02:14:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0182e5576210.1371/journal.pone.0055762Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.Gabriele SchelerWe present a novel formulation for biochemical reaction networks in the context of protein signal transduction. The model consists of input-output transfer functions, which are derived from differential equations, using stable equilibria. We select a set of "source" species, which are interpreted as input signals. Signals are transmitted to all other species in the system (the "target" species) with a specific delay and with a specific transmission strength. The delay is computed as the maximal reaction time until a stable equilibrium for the target species is reached, in the context of all other reactions in the system. The transmission strength is the concentration change of the target species. The computed input-output transfer functions can be stored in a matrix, fitted with parameters, and even recalled to build dynamical models on the basis of state changes. By separating the temporal and the magnitudinal domain we can greatly simplify the computational model, circumventing typical problems of complex dynamical systems. The transfer function transformation of biochemical reaction systems can be applied to mass-action kinetic models of signal transduction. The paper shows that this approach yields significant novel insights while remaining a fully testable and executable dynamical model for signal transduction. In particular we can deconstruct the complex system into local transfer functions between individual species. As an example, we examine modularity and signal integration using a published model of striatal neural plasticity. The modularizations that emerge correspond to a known biological distinction between calcium-dependent and cAMP-dependent pathways. Remarkably, we found that overall interconnectedness depends on the magnitude of inputs, with higher connectivity at low input concentrations and significant modularization at moderate to high input concentrations. This general result, which directly follows from the properties of individual transfer functions, contradicts notions of ubiquitous complexity by showing input-dependent signal transmission inactivation.http://europepmc.org/articles/PMC3565992?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Gabriele Scheler
spellingShingle Gabriele Scheler
Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
PLoS ONE
author_facet Gabriele Scheler
author_sort Gabriele Scheler
title Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
title_short Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
title_full Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
title_fullStr Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
title_full_unstemmed Transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
title_sort transfer functions for protein signal transduction: application to a model of striatal neural plasticity.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description We present a novel formulation for biochemical reaction networks in the context of protein signal transduction. The model consists of input-output transfer functions, which are derived from differential equations, using stable equilibria. We select a set of "source" species, which are interpreted as input signals. Signals are transmitted to all other species in the system (the "target" species) with a specific delay and with a specific transmission strength. The delay is computed as the maximal reaction time until a stable equilibrium for the target species is reached, in the context of all other reactions in the system. The transmission strength is the concentration change of the target species. The computed input-output transfer functions can be stored in a matrix, fitted with parameters, and even recalled to build dynamical models on the basis of state changes. By separating the temporal and the magnitudinal domain we can greatly simplify the computational model, circumventing typical problems of complex dynamical systems. The transfer function transformation of biochemical reaction systems can be applied to mass-action kinetic models of signal transduction. The paper shows that this approach yields significant novel insights while remaining a fully testable and executable dynamical model for signal transduction. In particular we can deconstruct the complex system into local transfer functions between individual species. As an example, we examine modularity and signal integration using a published model of striatal neural plasticity. The modularizations that emerge correspond to a known biological distinction between calcium-dependent and cAMP-dependent pathways. Remarkably, we found that overall interconnectedness depends on the magnitude of inputs, with higher connectivity at low input concentrations and significant modularization at moderate to high input concentrations. This general result, which directly follows from the properties of individual transfer functions, contradicts notions of ubiquitous complexity by showing input-dependent signal transmission inactivation.
url http://europepmc.org/articles/PMC3565992?pdf=render
work_keys_str_mv AT gabrielescheler transferfunctionsforproteinsignaltransductionapplicationtoamodelofstriatalneuralplasticity
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