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Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons

Various types of neural-based signals, such as EEG, local field potentials and intracellular synaptic potentials, integrate multiple sources of activity distributed across large assemblies. They have in common a power-law frequency-scaling structure at high frequencies, but it is still unclear wheth...

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Autores principales: El Boustani, Sami, Marre, Olivier, Béhuret, Sébastien, Baudot, Pierre, Yger, Pierre, Bal, Thierry, Destexhe, Alain, Frégnac, Yves
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2740863/
https://www.ncbi.nlm.nih.gov/pubmed/19779556
http://dx.doi.org/10.1371/journal.pcbi.1000519
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author El Boustani, Sami
Marre, Olivier
Béhuret, Sébastien
Baudot, Pierre
Yger, Pierre
Bal, Thierry
Destexhe, Alain
Frégnac, Yves
author_facet El Boustani, Sami
Marre, Olivier
Béhuret, Sébastien
Baudot, Pierre
Yger, Pierre
Bal, Thierry
Destexhe, Alain
Frégnac, Yves
author_sort El Boustani, Sami
collection PubMed
description Various types of neural-based signals, such as EEG, local field potentials and intracellular synaptic potentials, integrate multiple sources of activity distributed across large assemblies. They have in common a power-law frequency-scaling structure at high frequencies, but it is still unclear whether this scaling property is dominated by intrinsic neuronal properties or by network activity. The latter case is particularly interesting because if frequency-scaling reflects the network state it could be used to characterize the functional impact of the connectivity. In intracellularly recorded neurons of cat primary visual cortex in vivo, the power spectral density of V(m) activity displays a power-law structure at high frequencies with a fractional scaling exponent. We show that this exponent is not constant, but depends on the visual statistics used to drive the network. To investigate the determinants of this frequency-scaling, we considered a generic recurrent model of cortex receiving a retinotopically organized external input. Similarly to the in vivo case, our in computo simulations show that the scaling exponent reflects the correlation level imposed in the input. This systematic dependence was also replicated at the single cell level, by controlling independently, in a parametric way, the strength and the temporal decay of the pairwise correlation between presynaptic inputs. This last model was implemented in vitro by imposing the correlation control in artificial presynaptic spike trains through dynamic-clamp techniques. These in vitro manipulations induced a modulation of the scaling exponent, similar to that observed in vivo and predicted in computo. We conclude that the frequency-scaling exponent of the V(m) reflects stimulus-driven correlations in the cortical network activity. Therefore, we propose that the scaling exponent could be used to read-out the “effective” connectivity responsible for the dynamical signature of the population signals measured at different integration levels, from Vm to LFP, EEG and fMRI.
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spelling pubmed-27408632009-09-25 Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons El Boustani, Sami Marre, Olivier Béhuret, Sébastien Baudot, Pierre Yger, Pierre Bal, Thierry Destexhe, Alain Frégnac, Yves PLoS Comput Biol Research Article Various types of neural-based signals, such as EEG, local field potentials and intracellular synaptic potentials, integrate multiple sources of activity distributed across large assemblies. They have in common a power-law frequency-scaling structure at high frequencies, but it is still unclear whether this scaling property is dominated by intrinsic neuronal properties or by network activity. The latter case is particularly interesting because if frequency-scaling reflects the network state it could be used to characterize the functional impact of the connectivity. In intracellularly recorded neurons of cat primary visual cortex in vivo, the power spectral density of V(m) activity displays a power-law structure at high frequencies with a fractional scaling exponent. We show that this exponent is not constant, but depends on the visual statistics used to drive the network. To investigate the determinants of this frequency-scaling, we considered a generic recurrent model of cortex receiving a retinotopically organized external input. Similarly to the in vivo case, our in computo simulations show that the scaling exponent reflects the correlation level imposed in the input. This systematic dependence was also replicated at the single cell level, by controlling independently, in a parametric way, the strength and the temporal decay of the pairwise correlation between presynaptic inputs. This last model was implemented in vitro by imposing the correlation control in artificial presynaptic spike trains through dynamic-clamp techniques. These in vitro manipulations induced a modulation of the scaling exponent, similar to that observed in vivo and predicted in computo. We conclude that the frequency-scaling exponent of the V(m) reflects stimulus-driven correlations in the cortical network activity. Therefore, we propose that the scaling exponent could be used to read-out the “effective” connectivity responsible for the dynamical signature of the population signals measured at different integration levels, from Vm to LFP, EEG and fMRI. Public Library of Science 2009-09-25 /pmc/articles/PMC2740863/ /pubmed/19779556 http://dx.doi.org/10.1371/journal.pcbi.1000519 Text en El Boustani et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
El Boustani, Sami
Marre, Olivier
Béhuret, Sébastien
Baudot, Pierre
Yger, Pierre
Bal, Thierry
Destexhe, Alain
Frégnac, Yves
Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons
title Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons
title_full Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons
title_fullStr Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons
title_full_unstemmed Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons
title_short Network-State Modulation of Power-Law Frequency-Scaling in Visual Cortical Neurons
title_sort network-state modulation of power-law frequency-scaling in visual cortical neurons
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2740863/
https://www.ncbi.nlm.nih.gov/pubmed/19779556
http://dx.doi.org/10.1371/journal.pcbi.1000519
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