Cascade-induced synchrony in stochastically driven neuronal networks.

Perfect spike-to-spike synchrony is studied in all-to-all coupled networks of identical excitatory, current-based, integrate-and-fire neurons with delta-impulse coupling currents and Poisson spike-train external drive. This synchrony is induced by repeated cascading "total firing events," during which all neurons fire at once. In this regime, the network exhibits nearly periodic dynamics, switching between an effectively uncoupled state and a cascade-coupled total firing state. The probability of cascading total firing events occurring in the network is computed through a combinatorial analysis conditioned upon the random time when the first neuron fires and using the probability distribution of the subthreshold membrane potentials for the remaining neurons in the network. The probability distribution of the former is found from a first-passage-time problem described by a Fokker-Planck equation, which is solved analytically via an eigenfunction expansion. The latter is found using a central limit argument via a calculation of the cumulants of a single neuronal voltage. The influence of additional physiological effects that hinder or eliminate cascade-induced synchrony are also investigated. Conditions for the validity of the approximations made in the analytical derivations are discussed and verified via direct numerical simulations.

[1]  R. Rosenfeld Nature , 2009, Otolaryngology--head and neck surgery : official journal of American Academy of Otolaryngology-Head and Neck Surgery.

[2]  D. R. Cox Journal of Applied Probability , 1964, Canadian Mathematical Bulletin.

[3]  H. Kalmus Biological Cybernetics , 1972, Nature.

[4]  G. G. Stokes "J." , 1890, The New Yale Book of Quotations.

[5]  Thomas de Quincey [C] , 2000, The Works of Thomas De Quincey, Vol. 1: Writings, 1799–1820.

[6]  Henry C. Tuckwell,et al.  Introduction to theoretical neurobiology , 1988 .

[7]  L. Reichl A modern course in statistical physics , 1980 .

[8]  B. M. Fulk MATH , 1992 .

[9]  C. Gardiner Handbook of Stochastic Methods , 1983 .

[10]  J. Kingman A FIRST COURSE IN STOCHASTIC PROCESSES , 1967 .

[11]  廣瀬雄一,et al.  Neuroscience , 2019, Workplace Attachments.

[12]  Samuel Karlin,et al.  A First Course on Stochastic Processes , 1968 .

[13]  W. J. Nowack Neocortical Dynamics and Human EEG Rhythms , 1995, Neurology.

[14]  D. Wilkin,et al.  Neuron , 2001, Brain Research.

[15]  W. N. Bailey Confluent Hypergeometric Functions , 1960, Nature.

[16]  M. V. Rossum,et al.  In Neural Computation , 2022 .

[17]  Charles M. Grinstead,et al.  Introduction to probability , 1999, Statistics for the Behavioural Sciences.

[18]  P. Dayan Fast oscillations in cortical circuits , 2000 .