Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.

Precise spatio-temporal patterns of neuronal action potentials underly e.g. sensory representations and control of muscle activities. However, it is not known how the synaptic efficacies in the neuronal networks of the brain adapt such that they can reliably generate spikes at specific points in tim...

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Main Authors: Christian Albers, Maren Westkott, Klaus Pawelzik
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4763343?pdf=render
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spelling doaj-cc445d6bec054a38964684e3aee0ca052020-11-24T21:39:33ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01112e014894810.1371/journal.pone.0148948Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.Christian AlbersMaren WestkottKlaus PawelzikPrecise spatio-temporal patterns of neuronal action potentials underly e.g. sensory representations and control of muscle activities. However, it is not known how the synaptic efficacies in the neuronal networks of the brain adapt such that they can reliably generate spikes at specific points in time. Existing activity-dependent plasticity rules like Spike-Timing-Dependent Plasticity are agnostic to the goal of learning spike times. On the other hand, the existing formal and supervised learning algorithms perform a temporally precise comparison of projected activity with the target, but there is no known biologically plausible implementation of this comparison. Here, we propose a simple and local unsupervised synaptic plasticity mechanism that is derived from the requirement of a balanced membrane potential. Since the relevant signal for synaptic change is the postsynaptic voltage rather than spike times, we call the plasticity rule Membrane Potential Dependent Plasticity (MPDP). Combining our plasticity mechanism with spike after-hyperpolarization causes a sensitivity of synaptic change to pre- and postsynaptic spike times which can reproduce Hebbian spike timing dependent plasticity for inhibitory synapses as was found in experiments. In addition, the sensitivity of MPDP to the time course of the voltage when generating a spike allows MPDP to distinguish between weak (spurious) and strong (teacher) spikes, which therefore provides a neuronal basis for the comparison of actual and target activity. For spatio-temporal input spike patterns our conceptually simple plasticity rule achieves a surprisingly high storage capacity for spike associations. The sensitivity of the MPDP to the subthreshold membrane potential during training allows robust memory retrieval after learning even in the presence of activity corrupted by noise. We propose that MPDP represents a biophysically plausible mechanism to learn temporal target activity patterns.http://europepmc.org/articles/PMC4763343?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Christian Albers
Maren Westkott
Klaus Pawelzik
spellingShingle Christian Albers
Maren Westkott
Klaus Pawelzik
Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.
PLoS ONE
author_facet Christian Albers
Maren Westkott
Klaus Pawelzik
author_sort Christian Albers
title Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.
title_short Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.
title_full Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.
title_fullStr Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.
title_full_unstemmed Learning of Precise Spike Times with Homeostatic Membrane Potential Dependent Synaptic Plasticity.
title_sort learning of precise spike times with homeostatic membrane potential dependent synaptic plasticity.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description Precise spatio-temporal patterns of neuronal action potentials underly e.g. sensory representations and control of muscle activities. However, it is not known how the synaptic efficacies in the neuronal networks of the brain adapt such that they can reliably generate spikes at specific points in time. Existing activity-dependent plasticity rules like Spike-Timing-Dependent Plasticity are agnostic to the goal of learning spike times. On the other hand, the existing formal and supervised learning algorithms perform a temporally precise comparison of projected activity with the target, but there is no known biologically plausible implementation of this comparison. Here, we propose a simple and local unsupervised synaptic plasticity mechanism that is derived from the requirement of a balanced membrane potential. Since the relevant signal for synaptic change is the postsynaptic voltage rather than spike times, we call the plasticity rule Membrane Potential Dependent Plasticity (MPDP). Combining our plasticity mechanism with spike after-hyperpolarization causes a sensitivity of synaptic change to pre- and postsynaptic spike times which can reproduce Hebbian spike timing dependent plasticity for inhibitory synapses as was found in experiments. In addition, the sensitivity of MPDP to the time course of the voltage when generating a spike allows MPDP to distinguish between weak (spurious) and strong (teacher) spikes, which therefore provides a neuronal basis for the comparison of actual and target activity. For spatio-temporal input spike patterns our conceptually simple plasticity rule achieves a surprisingly high storage capacity for spike associations. The sensitivity of the MPDP to the subthreshold membrane potential during training allows robust memory retrieval after learning even in the presence of activity corrupted by noise. We propose that MPDP represents a biophysically plausible mechanism to learn temporal target activity patterns.
url http://europepmc.org/articles/PMC4763343?pdf=render
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