Emergence of physiological oscillation frequencies in a computer model of neocortex

Coordination of neocortical oscillations has been hypothesized to underlie the binding essential to cognitive function. However, the mechanisms that generate neocortical oscillations in physiological frequency bands remain unknown. We hypothesized that interlaminar relations in neocortex would provi...

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Main Authors: Samuel A Neymotin, Heekyung eLee, Eunhye ePark, Andre A Fenton, William W Lytton
Format: Article
Language:English
Published: Frontiers Media S.A. 2011-04-01
Series:Frontiers in Computational Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncom.2011.00019/full
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spelling doaj-9b5d0c61f0cb461c8e5e4717b425ac682020-11-25T00:59:57ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882011-04-01510.3389/fncom.2011.000198446Emergence of physiological oscillation frequencies in a computer model of neocortexSamuel A Neymotin0Heekyung eLee1Eunhye ePark2Andre A Fenton3Andre A Fenton4Andre A Fenton5Andre A Fenton6William W Lytton7William W Lytton8William W Lytton9William W Lytton10William W Lytton11SUNY Downstate / NYU-PolySUNY DownstateNew York UniversityNew York UniversitySUNY DownstateSUNY Downstate / NYU-PolySUNY DownstateSUNY DownstateSUNY DownstateKings County HospitalSUNY Downstate / NYU-PolySUNY DownstateCoordination of neocortical oscillations has been hypothesized to underlie the binding essential to cognitive function. However, the mechanisms that generate neocortical oscillations in physiological frequency bands remain unknown. We hypothesized that interlaminar relations in neocortex would provide multiple intermediate loops that would play particular roles in generating oscillations, adding different dynamics to the network. We simulated networks from sensory neocortex using 9 columns of event-driven rule-based neurons wired according to anatomical data and driven with random white-noise synaptic inputs. We tuned the network to achieve realistic cell firing rates and to avoid population spikes. A physiological frequency spectrum appeared as an emergent property, displayingdominant frequencies that were not present in the inputs or in the intrinsic or activated frequencies of any of the cell groups. We monitored spectral changes while using minimal dynamical perturbation as a methodology through gradual introduction of hubs into individual layers. We found that hubs in layer 2/3 excitatory cells had the greatest influence on overall network activity, suggesting that this subpopulation was a primary generator of theta/beta strength in the network. Similarly, layer 2/3 interneurons appeared largely responsible for gamma activation through preferential attenuation of the rest of the spectrum. The network showed evidence of frequency homeostasis: increased activation of supragranular layers increased firing rates in the network without altering the spectral profile, and alteration in synaptic delays did not significantly shift spectral peaks. Direct comparison of the power spectra with experimentally recorded local field potentials fromprefrontal cortex of awake rat showed substantial similarities, including comparable patterns of cross-frequency coupling.http://journal.frontiersin.org/Journal/10.3389/fncom.2011.00019/fullHomeostasisNeocortexoscillationssynchronySimulationscolumns
collection DOAJ
language English
format Article
sources DOAJ
author Samuel A Neymotin
Heekyung eLee
Eunhye ePark
Andre A Fenton
Andre A Fenton
Andre A Fenton
Andre A Fenton
William W Lytton
William W Lytton
William W Lytton
William W Lytton
William W Lytton
spellingShingle Samuel A Neymotin
Heekyung eLee
Eunhye ePark
Andre A Fenton
Andre A Fenton
Andre A Fenton
Andre A Fenton
William W Lytton
William W Lytton
William W Lytton
William W Lytton
William W Lytton
Emergence of physiological oscillation frequencies in a computer model of neocortex
Frontiers in Computational Neuroscience
Homeostasis
Neocortex
oscillations
synchrony
Simulations
columns
author_facet Samuel A Neymotin
Heekyung eLee
Eunhye ePark
Andre A Fenton
Andre A Fenton
Andre A Fenton
Andre A Fenton
William W Lytton
William W Lytton
William W Lytton
William W Lytton
William W Lytton
author_sort Samuel A Neymotin
title Emergence of physiological oscillation frequencies in a computer model of neocortex
title_short Emergence of physiological oscillation frequencies in a computer model of neocortex
title_full Emergence of physiological oscillation frequencies in a computer model of neocortex
title_fullStr Emergence of physiological oscillation frequencies in a computer model of neocortex
title_full_unstemmed Emergence of physiological oscillation frequencies in a computer model of neocortex
title_sort emergence of physiological oscillation frequencies in a computer model of neocortex
publisher Frontiers Media S.A.
series Frontiers in Computational Neuroscience
issn 1662-5188
publishDate 2011-04-01
description Coordination of neocortical oscillations has been hypothesized to underlie the binding essential to cognitive function. However, the mechanisms that generate neocortical oscillations in physiological frequency bands remain unknown. We hypothesized that interlaminar relations in neocortex would provide multiple intermediate loops that would play particular roles in generating oscillations, adding different dynamics to the network. We simulated networks from sensory neocortex using 9 columns of event-driven rule-based neurons wired according to anatomical data and driven with random white-noise synaptic inputs. We tuned the network to achieve realistic cell firing rates and to avoid population spikes. A physiological frequency spectrum appeared as an emergent property, displayingdominant frequencies that were not present in the inputs or in the intrinsic or activated frequencies of any of the cell groups. We monitored spectral changes while using minimal dynamical perturbation as a methodology through gradual introduction of hubs into individual layers. We found that hubs in layer 2/3 excitatory cells had the greatest influence on overall network activity, suggesting that this subpopulation was a primary generator of theta/beta strength in the network. Similarly, layer 2/3 interneurons appeared largely responsible for gamma activation through preferential attenuation of the rest of the spectrum. The network showed evidence of frequency homeostasis: increased activation of supragranular layers increased firing rates in the network without altering the spectral profile, and alteration in synaptic delays did not significantly shift spectral peaks. Direct comparison of the power spectra with experimentally recorded local field potentials fromprefrontal cortex of awake rat showed substantial similarities, including comparable patterns of cross-frequency coupling.
topic Homeostasis
Neocortex
oscillations
synchrony
Simulations
columns
url http://journal.frontiersin.org/Journal/10.3389/fncom.2011.00019/full
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