Cortical Neural Computation by Discrete Results Hypothesis

One of the most challenging problems we face in neuroscience is to understand how the cortex performs computations. There is increasing evidence that the power of the cortical processing is produced by populations of neurons forming dynamic neuronal ensembles. Theoretical proposals and multineuronal...

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Main Authors: Carlos Castejon, Angel Nunez
Format: Article
Language:English
Published: Frontiers Media S.A. 2016-10-01
Series:Frontiers in Neural Circuits
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncir.2016.00081/full
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spelling doaj-66aa2d747975454a95cde236f8151b692020-11-25T00:32:11ZengFrontiers Media S.A.Frontiers in Neural Circuits1662-51102016-10-011010.3389/fncir.2016.00081219165Cortical Neural Computation by Discrete Results HypothesisCarlos Castejon0Angel Nunez1Universidad Autonoma de MadridUniversidad Autonoma de MadridOne of the most challenging problems we face in neuroscience is to understand how the cortex performs computations. There is increasing evidence that the power of the cortical processing is produced by populations of neurons forming dynamic neuronal ensembles. Theoretical proposals and multineuronal experimental studies have revealed that ensembles of neurons can form emergent functional units. However, how these ensembles are implicated in cortical computations is still a mystery.Although cell ensembles have been associated with brain rhythms, the functional interaction remains largely unclear. It is still unknown how spatially distributed neuronal activity can be temporally integrated to contribute to cortical computations. A theoretical explanation integrating spatial and temporal aspects of cortical processing is still lacking.In this Hypothesis and Theory article, we propose a new functional theoretical framework to explain the computational roles of these ensembles in cortical processing. We suggest that complex neural computations underlying cortical processing could be temporally discrete and that sensory information would need to be quantized to be computed by the cerebral cortex. Accordingly, we propose that cortical processing is produced by the computation of discrete spatio-temporal functional units that we have called ‘Discrete Results' (Discrete Results Hypothesis). This hypothesis represents a novel functional mechanism by which information processing is computed in the cortex. Furthermore, we propose that precise dynamic sequences of ‘Discrete Results’ is the mechanism used by the cortex to extract, code, memorize and transmit neural information. The novel ‘Discrete Result' concept has the ability to match the spatial and temporal aspects of cortical processing. We discuss the possible neural underpinnings of these functional computational units and describe the empirical evidence supporting our hypothesis. We propose that FS interneuron may be a key element in our hypothesis providing the basis for this computation.http://journal.frontiersin.org/Journal/10.3389/fncir.2016.00081/fullCerebral Cortexneural synchronizationbrain oscillationssensory processingfast-spiking cellsDiscrete computation
collection DOAJ
language English
format Article
sources DOAJ
author Carlos Castejon
Angel Nunez
spellingShingle Carlos Castejon
Angel Nunez
Cortical Neural Computation by Discrete Results Hypothesis
Frontiers in Neural Circuits
Cerebral Cortex
neural synchronization
brain oscillations
sensory processing
fast-spiking cells
Discrete computation
author_facet Carlos Castejon
Angel Nunez
author_sort Carlos Castejon
title Cortical Neural Computation by Discrete Results Hypothesis
title_short Cortical Neural Computation by Discrete Results Hypothesis
title_full Cortical Neural Computation by Discrete Results Hypothesis
title_fullStr Cortical Neural Computation by Discrete Results Hypothesis
title_full_unstemmed Cortical Neural Computation by Discrete Results Hypothesis
title_sort cortical neural computation by discrete results hypothesis
publisher Frontiers Media S.A.
series Frontiers in Neural Circuits
issn 1662-5110
publishDate 2016-10-01
description One of the most challenging problems we face in neuroscience is to understand how the cortex performs computations. There is increasing evidence that the power of the cortical processing is produced by populations of neurons forming dynamic neuronal ensembles. Theoretical proposals and multineuronal experimental studies have revealed that ensembles of neurons can form emergent functional units. However, how these ensembles are implicated in cortical computations is still a mystery.Although cell ensembles have been associated with brain rhythms, the functional interaction remains largely unclear. It is still unknown how spatially distributed neuronal activity can be temporally integrated to contribute to cortical computations. A theoretical explanation integrating spatial and temporal aspects of cortical processing is still lacking.In this Hypothesis and Theory article, we propose a new functional theoretical framework to explain the computational roles of these ensembles in cortical processing. We suggest that complex neural computations underlying cortical processing could be temporally discrete and that sensory information would need to be quantized to be computed by the cerebral cortex. Accordingly, we propose that cortical processing is produced by the computation of discrete spatio-temporal functional units that we have called ‘Discrete Results' (Discrete Results Hypothesis). This hypothesis represents a novel functional mechanism by which information processing is computed in the cortex. Furthermore, we propose that precise dynamic sequences of ‘Discrete Results’ is the mechanism used by the cortex to extract, code, memorize and transmit neural information. The novel ‘Discrete Result' concept has the ability to match the spatial and temporal aspects of cortical processing. We discuss the possible neural underpinnings of these functional computational units and describe the empirical evidence supporting our hypothesis. We propose that FS interneuron may be a key element in our hypothesis providing the basis for this computation.
topic Cerebral Cortex
neural synchronization
brain oscillations
sensory processing
fast-spiking cells
Discrete computation
url http://journal.frontiersin.org/Journal/10.3389/fncir.2016.00081/full
work_keys_str_mv AT carloscastejon corticalneuralcomputationbydiscreteresultshypothesis
AT angelnunez corticalneuralcomputationbydiscreteresultshypothesis
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