Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.

Symptoms of schizophrenia may arise from a failure of cortical circuits to filter-out irrelevant inputs. Schizophrenia has also been linked to disruptions in cortical inhibitory interneurons, consistent with the possibility that in the normally functioning brain, these cells are in some part respons...

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Main Authors: Nathan Insel, Jordan Guerguiev, Blake A Richards
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC6089457?pdf=render
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author Nathan Insel
Jordan Guerguiev
Blake A Richards
author_facet Nathan Insel
Jordan Guerguiev
Blake A Richards
author_sort Nathan Insel
collection DOAJ
description Symptoms of schizophrenia may arise from a failure of cortical circuits to filter-out irrelevant inputs. Schizophrenia has also been linked to disruptions in cortical inhibitory interneurons, consistent with the possibility that in the normally functioning brain, these cells are in some part responsible for determining which sensory inputs are relevant versus irrelevant. Here, we develop a neural network model that demonstrates how the cortex may learn to ignore irrelevant inputs through plasticity processes affecting inhibition. The model is based on the proposal that the amount of excitatory output from a cortical circuit encodes the expected magnitude of reward or punishment ("relevance"), which can be trained using a temporal difference learning mechanism acting on feedforward inputs to inhibitory interneurons. In the model, irrelevant and blocked stimuli drive lower levels of excitatory activity compared with novel and relevant stimuli, and this difference in activity levels is lost following disruptions to inhibitory units. When excitatory units are connected to a competitive-learning output layer with a threshold, the relevance code can be shown to "gate" both learning and behavioral responses to irrelevant stimuli. Accordingly, the combined network is capable of recapitulating published experimental data linking inhibition in frontal cortex with fear learning and expression. Finally, the model demonstrates how relevance learning can take place in parallel with other types of learning, through plasticity rules involving inhibitory and excitatory components, respectively. Altogether, this work offers a theory of how the cortex learns to selectively inhibit inputs, providing insight into how relevance-assignment problems may emerge in schizophrenia.
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spelling doaj.art-331d91d867dc4e2fb2c33a3ae7789d8f2022-12-21T18:31:28ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-08-01148e100631510.1371/journal.pcbi.1006315Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.Nathan InselJordan GuerguievBlake A RichardsSymptoms of schizophrenia may arise from a failure of cortical circuits to filter-out irrelevant inputs. Schizophrenia has also been linked to disruptions in cortical inhibitory interneurons, consistent with the possibility that in the normally functioning brain, these cells are in some part responsible for determining which sensory inputs are relevant versus irrelevant. Here, we develop a neural network model that demonstrates how the cortex may learn to ignore irrelevant inputs through plasticity processes affecting inhibition. The model is based on the proposal that the amount of excitatory output from a cortical circuit encodes the expected magnitude of reward or punishment ("relevance"), which can be trained using a temporal difference learning mechanism acting on feedforward inputs to inhibitory interneurons. In the model, irrelevant and blocked stimuli drive lower levels of excitatory activity compared with novel and relevant stimuli, and this difference in activity levels is lost following disruptions to inhibitory units. When excitatory units are connected to a competitive-learning output layer with a threshold, the relevance code can be shown to "gate" both learning and behavioral responses to irrelevant stimuli. Accordingly, the combined network is capable of recapitulating published experimental data linking inhibition in frontal cortex with fear learning and expression. Finally, the model demonstrates how relevance learning can take place in parallel with other types of learning, through plasticity rules involving inhibitory and excitatory components, respectively. Altogether, this work offers a theory of how the cortex learns to selectively inhibit inputs, providing insight into how relevance-assignment problems may emerge in schizophrenia.http://europepmc.org/articles/PMC6089457?pdf=render
spellingShingle Nathan Insel
Jordan Guerguiev
Blake A Richards
Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.
PLoS Computational Biology
title Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.
title_full Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.
title_fullStr Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.
title_full_unstemmed Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.
title_short Irrelevance by inhibition: Learning, computation, and implications for schizophrenia.
title_sort irrelevance by inhibition learning computation and implications for schizophrenia
url http://europepmc.org/articles/PMC6089457?pdf=render
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