Adaptation without Plasticity

Sensory adaptation is a phenomenon in which neurons are affected not only by their immediate input but also by the sequence of preceding inputs. In visual cortex, for example, neurons shift their preferred orientation after exposure to an oriented stimulus. This adaptation is traditionally attribute...

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Main Authors: Maria del Mar Quiroga, Adam P. Morris, Bart Krekelberg
Format: Article
Language:English
Published: Elsevier 2016-09-01
Series:Cell Reports
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2211124716311986
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spelling doaj-bf93c99cafd849ebba2ad0ec438dc3df2020-11-25T01:17:03ZengElsevierCell Reports2211-12472016-09-01171586810.1016/j.celrep.2016.08.089Adaptation without PlasticityMaria del Mar Quiroga0Adam P. Morris1Bart Krekelberg2Center for Molecular and Behavioral Neuroscience, Rutgers University-Newark, Newark, NJ 07102, USADepartment of Physiology, Neuroscience Program, Biomedicine Discovery Institute, Monash University, Clayton, VIC 3800, AustraliaCenter for Molecular and Behavioral Neuroscience, Rutgers University-Newark, Newark, NJ 07102, USASensory adaptation is a phenomenon in which neurons are affected not only by their immediate input but also by the sequence of preceding inputs. In visual cortex, for example, neurons shift their preferred orientation after exposure to an oriented stimulus. This adaptation is traditionally attributed to plasticity. We show that a recurrent network generates tuning curve shifts observed in cat and macaque visual cortex, even when all synaptic weights and intrinsic properties in the model are fixed. This demonstrates that, in a recurrent network, adaptation on timescales of hundreds of milliseconds does not require plasticity. Given the ubiquity of recurrent connections, this phenomenon likely contributes to responses observed across cortex and shows that plasticity cannot be inferred solely from changes in tuning on these timescales. More broadly, our findings show that recurrent connections can endow a network with a powerful mechanism to store and integrate recent contextual information.http://www.sciencedirect.com/science/article/pii/S2211124716311986neurosciencerecurrent neural networknetwork dynamicscomputational modelorientationprimary visual cortexvisionsensationperceptionsensory processing
collection DOAJ
language English
format Article
sources DOAJ
author Maria del Mar Quiroga
Adam P. Morris
Bart Krekelberg
spellingShingle Maria del Mar Quiroga
Adam P. Morris
Bart Krekelberg
Adaptation without Plasticity
Cell Reports
neuroscience
recurrent neural network
network dynamics
computational model
orientation
primary visual cortex
vision
sensation
perception
sensory processing
author_facet Maria del Mar Quiroga
Adam P. Morris
Bart Krekelberg
author_sort Maria del Mar Quiroga
title Adaptation without Plasticity
title_short Adaptation without Plasticity
title_full Adaptation without Plasticity
title_fullStr Adaptation without Plasticity
title_full_unstemmed Adaptation without Plasticity
title_sort adaptation without plasticity
publisher Elsevier
series Cell Reports
issn 2211-1247
publishDate 2016-09-01
description Sensory adaptation is a phenomenon in which neurons are affected not only by their immediate input but also by the sequence of preceding inputs. In visual cortex, for example, neurons shift their preferred orientation after exposure to an oriented stimulus. This adaptation is traditionally attributed to plasticity. We show that a recurrent network generates tuning curve shifts observed in cat and macaque visual cortex, even when all synaptic weights and intrinsic properties in the model are fixed. This demonstrates that, in a recurrent network, adaptation on timescales of hundreds of milliseconds does not require plasticity. Given the ubiquity of recurrent connections, this phenomenon likely contributes to responses observed across cortex and shows that plasticity cannot be inferred solely from changes in tuning on these timescales. More broadly, our findings show that recurrent connections can endow a network with a powerful mechanism to store and integrate recent contextual information.
topic neuroscience
recurrent neural network
network dynamics
computational model
orientation
primary visual cortex
vision
sensation
perception
sensory processing
url http://www.sciencedirect.com/science/article/pii/S2211124716311986
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AT adampmorris adaptationwithoutplasticity
AT bartkrekelberg adaptationwithoutplasticity
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