Structured chaos shapes spike-response noise entropy in balanced neural networks

Large networks of sparsely coupled, excitatory and inhibitory cells occur throughout the brain. For many models of these networks, a striking feature is that their dynamics are chaotic and thus, are sensitive to small perturbations. How does this chaos manifest in the neural code? Specifically, how...

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Main Authors: Guillaume eLajoie, Jean-Philippe eThivierge, Eric eShea-Brown
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-10-01
Series:Frontiers in Computational Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00123/full
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spelling doaj-007d6f9527e14e81ac21221c43fc6deb2020-11-24T22:45:52ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882014-10-01810.3389/fncom.2014.00123101896Structured chaos shapes spike-response noise entropy in balanced neural networksGuillaume eLajoie0Guillaume eLajoie1Guillaume eLajoie2Jean-Philippe eThivierge3Eric eShea-Brown4Eric eShea-Brown5Max Planck Institute for Dynamics and Self-OrganizationBernstein Center for Computational NeuroscienceUniversity of WashingtonUniversity of OttawaUniversity of WashingtonUniversity of WashingtonLarge networks of sparsely coupled, excitatory and inhibitory cells occur throughout the brain. For many models of these networks, a striking feature is that their dynamics are chaotic and thus, are sensitive to small perturbations. How does this chaos manifest in the neural code? Specifically, how variable are the spike patterns that such a network produces in response to an input signal? To answer this, we derive a bound for a general measure of variability -- spike-train entropy. This leads to important insights on the variability of multi-cell spike pattern distributions in large recurrent networks of spiking neurons responding to fluctuating inputs. The analysis is based on results from random dynamical systems theory and is complemented by detailed numerical simulations. We find that the spike pattern entropy is an order of magnitude lower than what would be extrapolated from single cells. This holds despite the fact that network coupling becomes vanishingly sparse as network size grows -- a phenomenon that depends on ``extensive chaos, as previously discovered for balanced networks without stimulus drive. Moreover, we show how spike pattern entropy is controlled by temporal features of the inputs. Our findings provide insight into how neural networks may encode stimuli in the presence of inherently chaotic dynamics.http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00123/fullnetwork dynamicsneural variabilityNeural excitabilitychaotic networksspiking stimulus responses
collection DOAJ
language English
format Article
sources DOAJ
author Guillaume eLajoie
Guillaume eLajoie
Guillaume eLajoie
Jean-Philippe eThivierge
Eric eShea-Brown
Eric eShea-Brown
spellingShingle Guillaume eLajoie
Guillaume eLajoie
Guillaume eLajoie
Jean-Philippe eThivierge
Eric eShea-Brown
Eric eShea-Brown
Structured chaos shapes spike-response noise entropy in balanced neural networks
Frontiers in Computational Neuroscience
network dynamics
neural variability
Neural excitability
chaotic networks
spiking stimulus responses
author_facet Guillaume eLajoie
Guillaume eLajoie
Guillaume eLajoie
Jean-Philippe eThivierge
Eric eShea-Brown
Eric eShea-Brown
author_sort Guillaume eLajoie
title Structured chaos shapes spike-response noise entropy in balanced neural networks
title_short Structured chaos shapes spike-response noise entropy in balanced neural networks
title_full Structured chaos shapes spike-response noise entropy in balanced neural networks
title_fullStr Structured chaos shapes spike-response noise entropy in balanced neural networks
title_full_unstemmed Structured chaos shapes spike-response noise entropy in balanced neural networks
title_sort structured chaos shapes spike-response noise entropy in balanced neural networks
publisher Frontiers Media S.A.
series Frontiers in Computational Neuroscience
issn 1662-5188
publishDate 2014-10-01
description Large networks of sparsely coupled, excitatory and inhibitory cells occur throughout the brain. For many models of these networks, a striking feature is that their dynamics are chaotic and thus, are sensitive to small perturbations. How does this chaos manifest in the neural code? Specifically, how variable are the spike patterns that such a network produces in response to an input signal? To answer this, we derive a bound for a general measure of variability -- spike-train entropy. This leads to important insights on the variability of multi-cell spike pattern distributions in large recurrent networks of spiking neurons responding to fluctuating inputs. The analysis is based on results from random dynamical systems theory and is complemented by detailed numerical simulations. We find that the spike pattern entropy is an order of magnitude lower than what would be extrapolated from single cells. This holds despite the fact that network coupling becomes vanishingly sparse as network size grows -- a phenomenon that depends on ``extensive chaos, as previously discovered for balanced networks without stimulus drive. Moreover, we show how spike pattern entropy is controlled by temporal features of the inputs. Our findings provide insight into how neural networks may encode stimuli in the presence of inherently chaotic dynamics.
topic network dynamics
neural variability
Neural excitability
chaotic networks
spiking stimulus responses
url http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00123/full
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