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整合-发放神经元模型综述:I. 均匀突触输入

A review of the integrate-and-fire neuron model: I. Homogeneous synaptic input.

作者信息

Burkitt A N

机构信息

The Bionic Ear Institute, 384-388 Albert Street, East Melbourne, VIC, 3002, Australia.

出版信息

Biol Cybern. 2006 Jul;95(1):1-19. doi: 10.1007/s00422-006-0068-6. Epub 2006 Apr 19.

DOI:10.1007/s00422-006-0068-6
PMID:16622699
Abstract

The integrate-and-fire neuron model is one of the most widely used models for analyzing the behavior of neural systems. It describes the membrane potential of a neuron in terms of the synaptic inputs and the injected current that it receives. An action potential (spike) is generated when the membrane potential reaches a threshold, but the actual changes associated with the membrane voltage and conductances driving the action potential do not form part of the model. The synaptic inputs to the neuron are considered to be stochastic and are described as a temporally homogeneous Poisson process. Methods and results for both current synapses and conductance synapses are examined in the diffusion approximation, where the individual contributions to the postsynaptic potential are small. The focus of this review is upon the mathematical techniques that give the time distribution of output spikes, namely stochastic differential equations and the Fokker-Planck equation. The integrate-and-fire neuron model has become established as a canonical model for the description of spiking neurons because it is capable of being analyzed mathematically while at the same time being sufficiently complex to capture many of the essential features of neural processing. A number of variations of the model are discussed, together with the relationship with the Hodgkin-Huxley neuron model and the comparison with electrophysiological data. A brief overview is given of two issues in neural information processing that the integrate-and-fire neuron model has contributed to - the irregular nature of spiking in cortical neurons and neural gain modulation.

摘要

积分发放神经元模型是分析神经系统行为时使用最广泛的模型之一。它根据神经元接收到的突触输入和注入电流来描述其膜电位。当膜电位达到阈值时会产生动作电位(尖峰),但与驱动动作电位的膜电压和电导相关的实际变化并不属于该模型的一部分。神经元的突触输入被视为随机的,并被描述为时间上均匀的泊松过程。在扩散近似中研究了电流突触和电导突触的方法及结果,其中对突触后电位的个体贡献较小。本综述的重点是给出输出尖峰时间分布的数学技术,即随机微分方程和福克 - 普朗克方程。积分发放神经元模型已成为描述发放神经元的经典模型,因为它能够进行数学分析,同时又足够复杂以捕捉神经处理的许多基本特征。文中讨论了该模型的多种变体,以及它与霍奇金 - 赫胥黎神经元模型的关系和与电生理数据的比较。简要概述了积分发放神经元模型所涉及的神经信息处理中的两个问题——皮层神经元发放的不规则性质和神经增益调制。

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