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Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks

We consider applications of path-integral methods to the analysis of a stochastic hybrid model representing a network of synaptically coupled spiking neuronal populations. The state of each local population is described in terms of two stochastic variables, a continuous synaptic variable and a discr...

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Autor principal: Bressloff, Paul C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4385107/
https://www.ncbi.nlm.nih.gov/pubmed/25852979
http://dx.doi.org/10.1186/s13408-014-0016-z
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author Bressloff, Paul C.
author_facet Bressloff, Paul C.
author_sort Bressloff, Paul C.
collection PubMed
description We consider applications of path-integral methods to the analysis of a stochastic hybrid model representing a network of synaptically coupled spiking neuronal populations. The state of each local population is described in terms of two stochastic variables, a continuous synaptic variable and a discrete activity variable. The synaptic variables evolve according to piecewise-deterministic dynamics describing, at the population level, synapses driven by spiking activity. The dynamical equations for the synaptic currents are only valid between jumps in spiking activity, and the latter are described by a jump Markov process whose transition rates depend on the synaptic variables. We assume a separation of time scales between fast spiking dynamics with time constant [Formula: see text] and slower synaptic dynamics with time constant τ. This naturally introduces a small positive parameter [Formula: see text] , which can be used to develop various asymptotic expansions of the corresponding path-integral representation of the stochastic dynamics. First, we derive a variational principle for maximum-likelihood paths of escape from a metastable state (large deviations in the small noise limit [Formula: see text] ). We then show how the path integral provides an efficient method for obtaining a diffusion approximation of the hybrid system for small ϵ. The resulting Langevin equation can be used to analyze the effects of fluctuations within the basin of attraction of a metastable state, that is, ignoring the effects of large deviations. We illustrate this by using the Langevin approximation to analyze the effects of intrinsic noise on pattern formation in a spatially structured hybrid network. In particular, we show how noise enlarges the parameter regime over which patterns occur, in an analogous fashion to PDEs. Finally, we carry out a [Formula: see text] -loop expansion of the path integral, and use this to derive corrections to voltage-based mean-field equations, analogous to the modified activity-based equations generated from a neural master equation.
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spelling pubmed-43851072015-04-07 Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks Bressloff, Paul C. J Math Neurosci Research We consider applications of path-integral methods to the analysis of a stochastic hybrid model representing a network of synaptically coupled spiking neuronal populations. The state of each local population is described in terms of two stochastic variables, a continuous synaptic variable and a discrete activity variable. The synaptic variables evolve according to piecewise-deterministic dynamics describing, at the population level, synapses driven by spiking activity. The dynamical equations for the synaptic currents are only valid between jumps in spiking activity, and the latter are described by a jump Markov process whose transition rates depend on the synaptic variables. We assume a separation of time scales between fast spiking dynamics with time constant [Formula: see text] and slower synaptic dynamics with time constant τ. This naturally introduces a small positive parameter [Formula: see text] , which can be used to develop various asymptotic expansions of the corresponding path-integral representation of the stochastic dynamics. First, we derive a variational principle for maximum-likelihood paths of escape from a metastable state (large deviations in the small noise limit [Formula: see text] ). We then show how the path integral provides an efficient method for obtaining a diffusion approximation of the hybrid system for small ϵ. The resulting Langevin equation can be used to analyze the effects of fluctuations within the basin of attraction of a metastable state, that is, ignoring the effects of large deviations. We illustrate this by using the Langevin approximation to analyze the effects of intrinsic noise on pattern formation in a spatially structured hybrid network. In particular, we show how noise enlarges the parameter regime over which patterns occur, in an analogous fashion to PDEs. Finally, we carry out a [Formula: see text] -loop expansion of the path integral, and use this to derive corrections to voltage-based mean-field equations, analogous to the modified activity-based equations generated from a neural master equation. Springer Berlin Heidelberg 2015-02-27 /pmc/articles/PMC4385107/ /pubmed/25852979 http://dx.doi.org/10.1186/s13408-014-0016-z Text en © Bressloff; licensee Springer. 2015 Open Access This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited.
spellingShingle Research
Bressloff, Paul C.
Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks
title Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks
title_full Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks
title_fullStr Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks
title_full_unstemmed Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks
title_short Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks
title_sort path-integral methods for analyzing the effects of fluctuations in stochastic hybrid neural networks
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4385107/
https://www.ncbi.nlm.nih.gov/pubmed/25852979
http://dx.doi.org/10.1186/s13408-014-0016-z
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