Biophysically grounded mean-field models of neural populations under electrical stimulation.

Electrical stimulation of neural systems is a key tool for understanding neural dynamics and ultimately for developing clinical treatments. Many applications of electrical stimulation affect large populations of neurons. However, computational models of large networks of spiking neurons are inherent...

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Main Authors: Caglar Cakan, Klaus Obermayer
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-04-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1007822
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spelling doaj-c903ef15c5ca4a039b9acf9f6a83bc862021-04-21T16:40:18ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-04-01164e100782210.1371/journal.pcbi.1007822Biophysically grounded mean-field models of neural populations under electrical stimulation.Caglar CakanKlaus ObermayerElectrical stimulation of neural systems is a key tool for understanding neural dynamics and ultimately for developing clinical treatments. Many applications of electrical stimulation affect large populations of neurons. However, computational models of large networks of spiking neurons are inherently hard to simulate and analyze. We evaluate a reduced mean-field model of excitatory and inhibitory adaptive exponential integrate-and-fire (AdEx) neurons which can be used to efficiently study the effects of electrical stimulation on large neural populations. The rich dynamical properties of this basic cortical model are described in detail and validated using large network simulations. Bifurcation diagrams reflecting the network's state reveal asynchronous up- and down-states, bistable regimes, and oscillatory regions corresponding to fast excitation-inhibition and slow excitation-adaptation feedback loops. The biophysical parameters of the AdEx neuron can be coupled to an electric field with realistic field strengths which then can be propagated up to the population description. We show how on the edge of bifurcation, direct electrical inputs cause network state transitions, such as turning on and off oscillations of the population rate. Oscillatory input can frequency-entrain and phase-lock endogenous oscillations. Relatively weak electric field strengths on the order of 1 V/m are able to produce these effects, indicating that field effects are strongly amplified in the network. The effects of time-varying external stimulation are well-predicted by the mean-field model, further underpinning the utility of low-dimensional neural mass models.https://doi.org/10.1371/journal.pcbi.1007822
collection DOAJ
language English
format Article
sources DOAJ
author Caglar Cakan
Klaus Obermayer
spellingShingle Caglar Cakan
Klaus Obermayer
Biophysically grounded mean-field models of neural populations under electrical stimulation.
PLoS Computational Biology
author_facet Caglar Cakan
Klaus Obermayer
author_sort Caglar Cakan
title Biophysically grounded mean-field models of neural populations under electrical stimulation.
title_short Biophysically grounded mean-field models of neural populations under electrical stimulation.
title_full Biophysically grounded mean-field models of neural populations under electrical stimulation.
title_fullStr Biophysically grounded mean-field models of neural populations under electrical stimulation.
title_full_unstemmed Biophysically grounded mean-field models of neural populations under electrical stimulation.
title_sort biophysically grounded mean-field models of neural populations under electrical stimulation.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2020-04-01
description Electrical stimulation of neural systems is a key tool for understanding neural dynamics and ultimately for developing clinical treatments. Many applications of electrical stimulation affect large populations of neurons. However, computational models of large networks of spiking neurons are inherently hard to simulate and analyze. We evaluate a reduced mean-field model of excitatory and inhibitory adaptive exponential integrate-and-fire (AdEx) neurons which can be used to efficiently study the effects of electrical stimulation on large neural populations. The rich dynamical properties of this basic cortical model are described in detail and validated using large network simulations. Bifurcation diagrams reflecting the network's state reveal asynchronous up- and down-states, bistable regimes, and oscillatory regions corresponding to fast excitation-inhibition and slow excitation-adaptation feedback loops. The biophysical parameters of the AdEx neuron can be coupled to an electric field with realistic field strengths which then can be propagated up to the population description. We show how on the edge of bifurcation, direct electrical inputs cause network state transitions, such as turning on and off oscillations of the population rate. Oscillatory input can frequency-entrain and phase-lock endogenous oscillations. Relatively weak electric field strengths on the order of 1 V/m are able to produce these effects, indicating that field effects are strongly amplified in the network. The effects of time-varying external stimulation are well-predicted by the mean-field model, further underpinning the utility of low-dimensional neural mass models.
url https://doi.org/10.1371/journal.pcbi.1007822
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AT klausobermayer biophysicallygroundedmeanfieldmodelsofneuralpopulationsunderelectricalstimulation
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