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视网膜神经节细胞持续放电中神经冲动之间的间隔分布。

The distribution of the intervals between neural impulses in the maintained discharges of retinal ganglion cells.

作者信息

Levine M W

机构信息

Department of Psychology, University of Illinois, Chicago 60680.

出版信息

Biol Cybern. 1991;65(6):459-67. doi: 10.1007/BF00204659.

Abstract

Simulated neural impulse trains were generated by a digital realization of the integrate-and-fire model. The variability in these impulse trains had as its origin a random noise of specified distribution. Three different distributions were used: the normal (Gaussian) distribution (no skew, normokurtic), a first-order gamma distribution (positive skew, leptokurtic), and a uniform distribution (no skew, platykurtic). Despite these differences in the distribution of the variability, the distributions of the intervals between impulses were nearly indistinguishable. These inter-impulse distributions were better fit with a hyperbolic gamma distribution than a hyperbolic normal distribution, although one might expect a better approximation for normally distributed inverse intervals. Consideration of why the inter-impulse distribution is independent of the distribution of the causative noise suggests two putative interval distributions that do not depend on the assumed noise distribution: the log normal distribution, which is predicated on the assumption that long intervals occur with the joint probability of small input values, and the random walk equation, which is the diffusion equation applied to a random walk model of the impulse generating process. Either of these equations provides a more satisfactory fit to the simulated impulse trains than the hyperbolic normal or hyperbolic gamma distributions. These equations also provide better fits to impulse trains derived from the maintained discharges of ganglion cells in the retinae of cats or goldfish. It is noted that both equations are free from the constraint that the coefficient of variation (CV) have a maximum of unity.(ABSTRACT TRUNCATED AT 250 WORDS)

摘要

模拟神经冲动序列由积分发放模型的数字实现生成。这些冲动序列的变异性源于特定分布的随机噪声。使用了三种不同的分布:正态(高斯)分布(无偏斜,正态峰度)、一阶伽马分布(正偏斜,尖峰态)和均匀分布(无偏斜,平峰态)。尽管变异性分布存在这些差异,但冲动之间的间隔分布几乎无法区分。这些冲动间分布与双曲伽马分布的拟合度优于双曲正态分布,尽管人们可能预期正态分布的逆间隔会有更好的近似。考虑到冲动间分布为何与引起噪声的分布无关,提出了两种不依赖于假定噪声分布的假定间隔分布:对数正态分布,其基于长间隔以小输入值的联合概率出现的假设;以及随机游走方程,它是应用于冲动生成过程随机游走模型的扩散方程。这两个方程对模拟冲动序列的拟合都比双曲正态或双曲伽马分布更令人满意。这些方程对从猫或金鱼视网膜神经节细胞的持续放电中得到的冲动序列也有更好的拟合。需要注意的是,这两个方程都不受变异系数(CV)最大值为1的约束。(摘要截短于250字)

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