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Modeling mesoscopic cortical dynamics using a mean-field model of conductance-based networks of adaptive exponential integrate-and-fire neurons

View ORCID ProfileYann Zerlaut, Sandrine Chemla, View ORCID ProfileFrederic Chavane, View ORCID ProfileAlain Destexhe
doi: https://doi.org/10.1101/168385
Yann Zerlaut
UNIC, CNRS, Gif sur Yvette;
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Sandrine Chemla
INT, CNRS, Marseille
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Frederic Chavane
INT, CNRS, Marseille
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Alain Destexhe
UNIC, CNRS, Gif sur Yvette;
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  • For correspondence: destexhe@unic.cnrs-gif.fr
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Abstract

Voltage-sensitive dye imaging (VSDi) has revealed fundamental properties of neocortical processing at macroscopic scales. Since for each pixel VSDi signals report the average membrane potential over hundreds of neurons, it seems natural to use a mean-field formalism to model such signals. Here, we present a mean-field model of networks of Adaptive Exponential (AdEx) integrate-and-fire neurons, with conductance-based synaptic interactions. We study here a network of regular-spiking (RS) excitatory neurons and fast-spiking (FS) inhibitory neurons. We use a Master Equation formalism, together with a semi-analytic approach to the transfer function of AdEx neurons to describe the average dynamics of the coupled populations. We compare the predictions of this mean-field model to simulated networks of RS-FS cells, first at the level of the spontaneous activity of the network, which is well predicted by the analytical description. Second, we investigate the response of the network to time-varying external input, and show that the mean-field model predicts the response time course of the population. Finally, to model VSDi signals, we consider a one-dimensional ring model made of interconnected RS-FS mean-field units. We found that this model can reproduce the spatio-temporal patterns seen in VSDi of awake monkey visual cortex as a response to local and transient visual stimuli. Conversely, we show that the model allows one to infer physiological parameters from the experimentally-recorded spatio-temporal patterns.

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The copyright holder for this preprint is the author/funder. It is made available under a CC-BY-NC-ND 4.0 International license.
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  • Posted November 12, 2017.

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Modeling mesoscopic cortical dynamics using a mean-field model of conductance-based networks of adaptive exponential integrate-and-fire neurons
Yann Zerlaut, Sandrine Chemla, Frederic Chavane, Alain Destexhe
bioRxiv 168385; doi: https://doi.org/10.1101/168385
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Modeling mesoscopic cortical dynamics using a mean-field model of conductance-based networks of adaptive exponential integrate-and-fire neurons
Yann Zerlaut, Sandrine Chemla, Frederic Chavane, Alain Destexhe
bioRxiv 168385; doi: https://doi.org/10.1101/168385

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