Spike-timing computation properties of a feed-forward neural network model

Brain function is characterized by dynamical interactions among networks of neurons. These interactions are mediated by network topology at many scales ranging from microcircuits to brain areas. Understanding how networks operate can be aided by understanding how the transformation of inputs depends...

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Main Authors: Drew Benjamin Sinha, Noah M Ledbetter, Dennis L Barbour
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-01-01
Series:Frontiers in Computational Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00005/full
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spelling doaj-00ccb4d3c9ec4a86bdfb7a8248f494072020-11-24T21:23:48ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882014-01-01810.3389/fncom.2014.0000554852Spike-timing computation properties of a feed-forward neural network modelDrew Benjamin Sinha0Noah M Ledbetter1Dennis L Barbour2Washington University in St. LouisWashington University in St. LouisWashington University in St. LouisBrain function is characterized by dynamical interactions among networks of neurons. These interactions are mediated by network topology at many scales ranging from microcircuits to brain areas. Understanding how networks operate can be aided by understanding how the transformation of inputs depends upon network connectivity patterns, e.g. serial and parallel pathways. To tractably determine how single synapses or groups of synapses in such pathways shape transformations, we modeled feed-forward networks of 7-22 neurons in which synaptic strength changed according to a spike-timing dependent plasticity rule. We investigated how activity varied when dynamics were perturbed by an activity-dependent electrical stimulation protocol (spike-triggered stimulation; STS) in networks of different topologies and background input correlations. STS can successfully reorganize functional brain networks in vivo, but with a variability in effectiveness that may derive partially from the underlying network topology. In a simulated network with a single disynaptic pathway driven by uncorrelated background activity, structured spike-timing relationships between polysynaptically connected neurons were not observed. When background activity was correlated or parallel disynaptic pathways were added, however, robust polysynaptic spike timing relationships were observed, and application of STS yielded predictable changes in synaptic strengths and spike-timing relationships. These observations suggest that precise input-related or topologically induced temporal relationships in network activity are necessary for polysynaptic signal propagation. Such constraints for polysynaptic computation suggest potential roles for higher-order topological structure in network organization, such as maintaining polysynaptic correlation in the face of relatively weak synapses.http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00005/fullcomputational modelingnetwork connectivitymicrocircuitsspike-timing dependent plasticity (STDP)biological neural networks
collection DOAJ
language English
format Article
sources DOAJ
author Drew Benjamin Sinha
Noah M Ledbetter
Dennis L Barbour
spellingShingle Drew Benjamin Sinha
Noah M Ledbetter
Dennis L Barbour
Spike-timing computation properties of a feed-forward neural network model
Frontiers in Computational Neuroscience
computational modeling
network connectivity
microcircuits
spike-timing dependent plasticity (STDP)
biological neural networks
author_facet Drew Benjamin Sinha
Noah M Ledbetter
Dennis L Barbour
author_sort Drew Benjamin Sinha
title Spike-timing computation properties of a feed-forward neural network model
title_short Spike-timing computation properties of a feed-forward neural network model
title_full Spike-timing computation properties of a feed-forward neural network model
title_fullStr Spike-timing computation properties of a feed-forward neural network model
title_full_unstemmed Spike-timing computation properties of a feed-forward neural network model
title_sort spike-timing computation properties of a feed-forward neural network model
publisher Frontiers Media S.A.
series Frontiers in Computational Neuroscience
issn 1662-5188
publishDate 2014-01-01
description Brain function is characterized by dynamical interactions among networks of neurons. These interactions are mediated by network topology at many scales ranging from microcircuits to brain areas. Understanding how networks operate can be aided by understanding how the transformation of inputs depends upon network connectivity patterns, e.g. serial and parallel pathways. To tractably determine how single synapses or groups of synapses in such pathways shape transformations, we modeled feed-forward networks of 7-22 neurons in which synaptic strength changed according to a spike-timing dependent plasticity rule. We investigated how activity varied when dynamics were perturbed by an activity-dependent electrical stimulation protocol (spike-triggered stimulation; STS) in networks of different topologies and background input correlations. STS can successfully reorganize functional brain networks in vivo, but with a variability in effectiveness that may derive partially from the underlying network topology. In a simulated network with a single disynaptic pathway driven by uncorrelated background activity, structured spike-timing relationships between polysynaptically connected neurons were not observed. When background activity was correlated or parallel disynaptic pathways were added, however, robust polysynaptic spike timing relationships were observed, and application of STS yielded predictable changes in synaptic strengths and spike-timing relationships. These observations suggest that precise input-related or topologically induced temporal relationships in network activity are necessary for polysynaptic signal propagation. Such constraints for polysynaptic computation suggest potential roles for higher-order topological structure in network organization, such as maintaining polysynaptic correlation in the face of relatively weak synapses.
topic computational modeling
network connectivity
microcircuits
spike-timing dependent plasticity (STDP)
biological neural networks
url http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00005/full
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