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神经膜去极化和峰电位间期产生的随机扩散模型。

The stochastic diffusion models of nerve membrane depolarization and interspike interval generation.

作者信息

Lánský P, Sato S

机构信息

Institute of Physiology, Academy of Sciences of the Czech Republic, Prague, Czech Republic.

出版信息

J Peripher Nerv Syst. 1999;4(1):27-42.

Abstract

The first step to make the theory of stochastic diffusion processes that arise in connection with single neuron description more understandable is reviewing the deterministic leaky-integrator model. After this step the general principles of simple stochastic models are summarized which clearly reveal that two different sources of noise, intrinsic and external, can be identified. Many possible strategies of neuronal coding exist and one of these, the rate coding, for which the stochastic modeling is relevant, is pursued further. The rate coding is reflected, in experimental as well as theoretical studies, by an input-output curve and its properties are reviewed for the most common stochastic diffusion models. The results for the simplest stochastic diffusion model, the Wiener process, are presented and from them strong limitations of this model can be understood. The most common diffusion model is the Ornstein-Uhlenbeck process, which is one substantial step closer to reality since the spontaneous changes of the membrane potential are included in the model. Both these models are characterized by an additive noise. Taking into account the state dependency of the changes caused by neuronal inputs, we derive models where the noise has a multiplicative effect on the membrane depolarization. Two of these models are compared with the Wiener and Ornstein-Uhlenbeck models. How to identify the parameters of the models, which is an unavoidable task for the models verification, is investigated. The time-variable input is taken into account in the last part of the paper. An intuitive approach is stressed throughout the review.

摘要

使与单个神经元描述相关的随机扩散过程理论更易于理解的第一步是回顾确定性泄漏积分器模型。在这一步之后,总结了简单随机模型的一般原理,这些原理清楚地表明可以识别两种不同的噪声源,即内在噪声和外在噪声。存在许多可能的神经元编码策略,其中一种与随机建模相关的速率编码将进一步探讨。在实验和理论研究中,速率编码通过输入 - 输出曲线体现,并且针对最常见的随机扩散模型回顾了其特性。给出了最简单的随机扩散模型——维纳过程的结果,从中可以理解该模型的严重局限性。最常见的扩散模型是奥恩斯坦 - 乌伦贝克过程,由于该模型包含了膜电位的自发变化,所以它比维纳过程更接近现实。这两种模型都具有加性噪声的特征。考虑到神经元输入引起的变化的状态依赖性,我们推导了噪声对膜去极化具有乘性效应的模型。将其中两个模型与维纳模型和奥恩斯坦 - 乌伦贝克模型进行了比较。研究了如何识别模型参数,这是模型验证中不可避免的任务。本文最后一部分考虑了时变输入。在整个综述过程中强调了一种直观的方法。

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