Temporal pattern separation in hippocampal neurons through multiplexed neural codes.

Pattern separation is a central concept in current theories of episodic memory: this computation is thought to support our ability to avoid confusion between similar memories by transforming similar cortical input patterns of neural activity into dissimilar output patterns before their long-term sto...

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Main Authors: Antoine D Madar, Laura A Ewell, Mathew V Jones
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-04-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC6476466?pdf=render
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spelling doaj-989d1ec743a04fd6a6b336f4fd806e832020-11-25T01:12:25ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582019-04-01154e100693210.1371/journal.pcbi.1006932Temporal pattern separation in hippocampal neurons through multiplexed neural codes.Antoine D MadarLaura A EwellMathew V JonesPattern separation is a central concept in current theories of episodic memory: this computation is thought to support our ability to avoid confusion between similar memories by transforming similar cortical input patterns of neural activity into dissimilar output patterns before their long-term storage in the hippocampus. Because there are many ways one can define patterns of neuronal activity and the similarity between them, pattern separation could in theory be achieved through multiple coding strategies. Using our recently developed assay that evaluates pattern separation in isolated tissue by controlling and recording the input and output spike trains of single hippocampal neurons, we explored neural codes through which pattern separation is performed by systematic testing of different similarity metrics and various time resolutions. We discovered that granule cells, the projection neurons of the dentate gyrus, can exhibit both pattern separation and its opposite computation, pattern convergence, depending on the neural code considered and the statistical structure of the input patterns. Pattern separation is favored when inputs are highly similar, and is achieved through spike time reorganization at short time scales (< 100 ms) as well as through variations in firing rate and burstiness at longer time scales. These multiplexed forms of pattern separation are network phenomena, notably controlled by GABAergic inhibition, that involve many celltypes with input-output transformations that participate in pattern separation to different extents and with complementary neural codes: a rate code for dentate fast-spiking interneurons, a burstiness code for hilar mossy cells and a synchrony code at long time scales for CA3 pyramidal cells. Therefore, the isolated hippocampal circuit itself is capable of performing temporal pattern separation using multiplexed coding strategies that might be essential to optimally disambiguate multimodal mnemonic representations.http://europepmc.org/articles/PMC6476466?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Antoine D Madar
Laura A Ewell
Mathew V Jones
spellingShingle Antoine D Madar
Laura A Ewell
Mathew V Jones
Temporal pattern separation in hippocampal neurons through multiplexed neural codes.
PLoS Computational Biology
author_facet Antoine D Madar
Laura A Ewell
Mathew V Jones
author_sort Antoine D Madar
title Temporal pattern separation in hippocampal neurons through multiplexed neural codes.
title_short Temporal pattern separation in hippocampal neurons through multiplexed neural codes.
title_full Temporal pattern separation in hippocampal neurons through multiplexed neural codes.
title_fullStr Temporal pattern separation in hippocampal neurons through multiplexed neural codes.
title_full_unstemmed Temporal pattern separation in hippocampal neurons through multiplexed neural codes.
title_sort temporal pattern separation in hippocampal neurons through multiplexed neural codes.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2019-04-01
description Pattern separation is a central concept in current theories of episodic memory: this computation is thought to support our ability to avoid confusion between similar memories by transforming similar cortical input patterns of neural activity into dissimilar output patterns before their long-term storage in the hippocampus. Because there are many ways one can define patterns of neuronal activity and the similarity between them, pattern separation could in theory be achieved through multiple coding strategies. Using our recently developed assay that evaluates pattern separation in isolated tissue by controlling and recording the input and output spike trains of single hippocampal neurons, we explored neural codes through which pattern separation is performed by systematic testing of different similarity metrics and various time resolutions. We discovered that granule cells, the projection neurons of the dentate gyrus, can exhibit both pattern separation and its opposite computation, pattern convergence, depending on the neural code considered and the statistical structure of the input patterns. Pattern separation is favored when inputs are highly similar, and is achieved through spike time reorganization at short time scales (< 100 ms) as well as through variations in firing rate and burstiness at longer time scales. These multiplexed forms of pattern separation are network phenomena, notably controlled by GABAergic inhibition, that involve many celltypes with input-output transformations that participate in pattern separation to different extents and with complementary neural codes: a rate code for dentate fast-spiking interneurons, a burstiness code for hilar mossy cells and a synchrony code at long time scales for CA3 pyramidal cells. Therefore, the isolated hippocampal circuit itself is capable of performing temporal pattern separation using multiplexed coding strategies that might be essential to optimally disambiguate multimodal mnemonic representations.
url http://europepmc.org/articles/PMC6476466?pdf=render
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