Literature DB >> 11405420

Population density methods for large-scale modelling of neuronal networks with realistic synaptic kinetics: cutting the dimension down to size.

E Haskell1, D Q Nykamp, D Tranchina.   

Abstract

Population density methods provide promising time-saving alternatives to direct Monte Carlo simulations of neuronal network activity, in which one tracks the state of thousands of individual neurons and synapses. A population density method has been found to be roughly a hundred times faster than direct simulation for various test networks of integrate-and-fire model neurons with instantaneous excitatory and inhibitory post-synaptic conductances. In this method, neurons are grouped into large populations of similar neurons. For each population, one calculates the evolution of a probability density function (PDF) which describes the distribution of neurons over state space. The population firing rate is then given by the total flux of probability across the threshold voltage for firing an action potential. Extending the method beyond instantaneous synapses is necessary for obtaining accurate results, because synaptic kinetics play an important role in network dynamics. Embellishments incorporating more realistic synaptic kinetics for the underlying neuron model increase the dimension of the PDF, which was one-dimensional in the instantaneous synapse case. This increase in dimension causes a substantial increase in computation time to find the exact PDF, decreasing the computational speed advantage of the population density method over direct Monte Carlo simulation. We report here on a one-dimensional model of the PDF for neurons with arbitrary synaptic kinetics. The method is more accurate than the mean-field method in the steady state, where the mean-field approximation works best, and also under dynamic-stimulus conditions. The method is much faster than direct simulations. Limitations of the method are demonstrated, and possible improvements are discussed.

Mesh:

Year:  2001        PMID: 11405420

Source DB:  PubMed          Journal:  Network        ISSN: 0954-898X            Impact factor:   1.273


  15 in total

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5.  Stochastic models of neuronal dynamics.

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6.  A multivariate population density model of the dLGN/PGN relay.

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8.  A kinetic theory approach to capturing interneuronal correlation: the feed-forward case.

Authors:  Chin-Yueh Liu; Duane Q Nykamp
Journal:  J Comput Neurosci       Date:  2008-11-06       Impact factor: 1.621

9.  Dynamics of spiking neurons: between homogeneity and synchrony.

Authors:  Aaditya V Rangan; Lai-Sang Young
Journal:  J Comput Neurosci       Date:  2012-10-25       Impact factor: 1.621

10.  Integrate-and-fire neurons driven by correlated stochastic input.

Authors:  Emilio Salinas; Terrence J Sejnowski
Journal:  Neural Comput       Date:  2002-09       Impact factor: 2.026

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