We present a kinetic theory for all-to-all coupled networks of identical, linear, integrate-andfire, excitatory point neurons in which a fast and a slow excitatory conductance are driven by the same spike train in the presence of synaptic failure. The maximal-entropy principle guides us in deriving a set of three (1+1)-dimensional kinetic moment equations from a Boltzmann-like equation describing the evolution of the one-neuron probability density function. We explain the emergence of correlation terms in the kinetic moment and Boltzmann-like equations as a consequence of simultaneous activation of both the fast and slow excitatory conductances, and furnish numerical evidence for their importance in correctly describing the coarse-grained d...
Author summary Population models describing the average activity of large neuronal ensembles are a p...
Recent work emphasizes that the maximum entropy principle provides a bridge between statistical mech...
The profile of transmembrane-channel expression in neurons is class dependent and a crucial determin...
Abstract. We present a detailed theoretical framework for statistical descriptions of neuronal netwo...
International audienceThe voltage-conductance kinetic equation for integrate and fire neurons has be...
We review a statistical physics approach for reduced descriptions of neuronal network dynamics. From...
To describe the collective behavior of large ensembles of neurons in neuronal network, a kinetic the...
University of Minnesota Ph.D. dissertation. July 2009. Major: Mathematics. Advisor: Duane Q. Nykamp....
International audienceIn terms of mathematical structure, the voltage-conductance kinetic systems fo...
International audienceIn terms of mathematical structure, the voltage-conductance kinetic systems fo...
This paper reviews our recent work addressing the role of both synaptic-input and connectivity-archi...
International audienceWe investigate the effect of electric synapses (gap junctions) on collective n...
We present a mathematical analysis of a networks with Integrate-and-Fire neurons with conductance ba...
A theoretical framework is developed for moment neuronal networks (MNNs). Within this framework, the...
International audienceWe present a mathematical analysis of a networks with Integrate-and-Fire neuro...
Author summary Population models describing the average activity of large neuronal ensembles are a p...
Recent work emphasizes that the maximum entropy principle provides a bridge between statistical mech...
The profile of transmembrane-channel expression in neurons is class dependent and a crucial determin...
Abstract. We present a detailed theoretical framework for statistical descriptions of neuronal netwo...
International audienceThe voltage-conductance kinetic equation for integrate and fire neurons has be...
We review a statistical physics approach for reduced descriptions of neuronal network dynamics. From...
To describe the collective behavior of large ensembles of neurons in neuronal network, a kinetic the...
University of Minnesota Ph.D. dissertation. July 2009. Major: Mathematics. Advisor: Duane Q. Nykamp....
International audienceIn terms of mathematical structure, the voltage-conductance kinetic systems fo...
International audienceIn terms of mathematical structure, the voltage-conductance kinetic systems fo...
This paper reviews our recent work addressing the role of both synaptic-input and connectivity-archi...
International audienceWe investigate the effect of electric synapses (gap junctions) on collective n...
We present a mathematical analysis of a networks with Integrate-and-Fire neurons with conductance ba...
A theoretical framework is developed for moment neuronal networks (MNNs). Within this framework, the...
International audienceWe present a mathematical analysis of a networks with Integrate-and-Fire neuro...
Author summary Population models describing the average activity of large neuronal ensembles are a p...
Recent work emphasizes that the maximum entropy principle provides a bridge between statistical mech...
The profile of transmembrane-channel expression in neurons is class dependent and a crucial determin...