Hasegawa Hideo
Department of Physics, Tokyo Gakugei University, Koganei, Tokyo 184-8501, Japan.
Phys Rev E Stat Nonlin Soft Matter Phys. 2003 Oct;68(4 Pt 1):041909. doi: 10.1103/PhysRevE.68.041909. Epub 2003 Oct 14.
A dynamical mean-field approximation (DMA) previously proposed by the present author [H. Hasegawa, Phys. Rev E 67, 041903 (2003)] has been extended to ensembles described by a general noisy spiking neuron model. Ensembles of N-unit neurons, each of which is expressed by coupled K-dimensional differential equations (DEs), are assumed to be subject to spatially correlated white noises. The original KN-dimensional stochastic DEs have been replaced by K(K+2)-dimensional deterministic DEs expressed in terms of means and the second-order moments of local and global variables: the fourth-order contributions are taken into account by the Gaussian decoupling approximation. Our DMA has been applied to an ensemble of Hodgkin-Huxley (HH) neurons (K=4), for which effects of the noise, the coupling strength, and the ensemble size on the response to a single-spike input have been investigated. Numerical results calculated by the DMA theory are in good agreement with those obtained by direct simulations, although the former computation is about a thousand times faster than the latter for a typical HH neuron ensemble with N=100.
作者先前提出的动态平均场近似(DMA)[H. Hasegawa,《物理评论E》67,041903(2003)]已扩展到由一般噪声发放神经元模型描述的系综。假设由N个单元神经元组成的系综,每个神经元由耦合的K维微分方程(DEs)表示,受到空间相关白噪声的作用。原始的KN维随机微分方程已被K(K + 2)维确定性微分方程所取代,这些方程用局部和全局变量的均值和二阶矩表示:通过高斯解耦近似考虑了四阶贡献。我们的DMA已应用于霍奇金 - 赫胥黎(HH)神经元系综(K = 4),研究了噪声、耦合强度和系综大小对单脉冲输入响应的影响。尽管对于具有N = 100的典型HH神经元系综,DMA理论计算速度比直接模拟快约一千倍,但DMA理论计算得到的数值结果与直接模拟得到的结果非常吻合。