The leaky integrate-and-fire model for neuronal spiking events driven by a periodic stimulus is studied by using the Fokker–Planck formulation. To this purpose, an essential use is made of the asymptotic behavior of the first-passage-time probability density function of a time homogeneous diffusion process through an asymptotically periodic threshold. Numerical comparisons with some recently published results derived by a different approach are performed. Use of a new asymptotic approximation is then made in order to design a numerical algorithm of predictor–corrector type to solve the integral equation in the unknown first-passage-time probability density function. Such algorithm, characterized by a reduced (linear) computation time, is seen to provide a high computation accuracy. Finally, it is shown that such an approach yields excellent approximations to the firing probability density function for a wide range of parameters, including the case of high stimulus frequencies.

On the evaluation of firing densities for periodically driven neuron models / Buonocore, Aniello; Caputo, Luigia; Pirozzi, Enrica. - In: MATHEMATICAL BIOSCIENCES. - ISSN 0025-5564. - STAMPA. - 214:1-2(2008), pp. 122-133. [10.1016/j.mbs.2008.02.003]

On the evaluation of firing densities for periodically driven neuron models

BUONOCORE, ANIELLO;CAPUTO, LUIGIA;PIROZZI, ENRICA
2008

Abstract

The leaky integrate-and-fire model for neuronal spiking events driven by a periodic stimulus is studied by using the Fokker–Planck formulation. To this purpose, an essential use is made of the asymptotic behavior of the first-passage-time probability density function of a time homogeneous diffusion process through an asymptotically periodic threshold. Numerical comparisons with some recently published results derived by a different approach are performed. Use of a new asymptotic approximation is then made in order to design a numerical algorithm of predictor–corrector type to solve the integral equation in the unknown first-passage-time probability density function. Such algorithm, characterized by a reduced (linear) computation time, is seen to provide a high computation accuracy. Finally, it is shown that such an approach yields excellent approximations to the firing probability density function for a wide range of parameters, including the case of high stimulus frequencies.
2008
On the evaluation of firing densities for periodically driven neuron models / Buonocore, Aniello; Caputo, Luigia; Pirozzi, Enrica. - In: MATHEMATICAL BIOSCIENCES. - ISSN 0025-5564. - STAMPA. - 214:1-2(2008), pp. 122-133. [10.1016/j.mbs.2008.02.003]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/335435
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