State-dependent mean-field formalism to model different activity states in conductance-based networks of spiking neurons

Cristiano Capone, Matteo di Volo, Alberto Romagnoni, Maurizio Mattia, and Alain Destexhe
Phys. Rev. E 100, 062413 – Published 23 December 2019

Abstract

More interest has been shown in recent years to large-scale spiking simulations of cerebral neuronal networks, coming both from the presence of high-performance computers and increasing details in experimental observations. In this context it is important to understand how population dynamics are generated by the designed parameters of the networks, which is the question addressed by mean-field theories. Despite analytic solutions for the mean-field dynamics already being proposed for current-based neurons (CUBA), a complete analytic description has not been achieved yet for more realistic neural properties, such as conductance-based (COBA) network of adaptive exponential neurons (AdEx). Here, we propose a principled approach to map a COBA on a CUBA. Such an approach provides a state-dependent approximation capable of reliably predicting the firing-rate properties of an AdEx neuron with noninstantaneous COBA integration. We also applied our theory to population dynamics, predicting the dynamical properties of the network in very different regimes, such as asynchronous irregular and synchronous irregular (slow oscillations). This result shows that a state-dependent approximation can be successfully introduced to take into account the subtle effects of COBA integration and to deal with a theory capable of correctly predicting the activity in regimes of alternating states like slow oscillations.

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  • Received 7 March 2019
  • Revised 12 October 2019

DOI:https://doi.org/10.1103/PhysRevE.100.062413

©2019 American Physical Society

Physics Subject Headings (PhySH)

NetworksPhysics of Living Systems

Authors & Affiliations

Cristiano Capone*

  • INFN, Sezione di Roma, 00185 Rome, Italy and Department of Integrative and Computational Neuroscience (ICN), Paris- Saclay Institute of Neuroscience (NeuroPSI), Centre National de la Recherche Scientifique (CNRS), 91198 Gif-sur-Yvette, France

Matteo di Volo

  • Department of Integrative and Computational Neuroscience (ICN), Paris-Saclay Institute of Neuroscience (NeuroPSI), Centre National de la Recherche Scientifique (CNRS), Laboratoire de Physique Théorique et Modelisation, Université de Cergy-Pontoise, 95302 Cergy-Pontoise cedex, France

Alberto Romagnoni

  • Data Team, Département d'informatique de l'ENS, École normale supérieure France, CNRS, PSL Research University, 75005 Paris France and Centre de recherche sur linflammation UMR 1149, Inserm-Universit Paris Diderot, Paris, France

Maurizio Mattia

  • National Center for Radiation Protection and Computational Physics, Istituto Superiore di Sanitá, 00161 Rome, Italy

Alain Destexhe

  • Department of Integrative and Computational Neuroscience (ICN), Paris- Saclay Institute of Neuroscience (NeuroPSI), Centre National de la Recherche Scientifique (CNRS), 91198 Gif-sur-Yvette, France

  • *cristiano.capone@roma1.infn.it

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Issue

Vol. 100, Iss. 6 — December 2019

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