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皮层网络建模:LIF神经元网络放电率的分析方法及网络的一些特性

Cortical network modeling: analytical methods for firing rates and some properties of networks of LIF neurons.

作者信息

Tuckwell Henry C

机构信息

Max Planck Institute for Mathematics in the Sciences, Inselstr. 22, Leipzig D-04103, Germany.

出版信息

J Physiol Paris. 2006 Jul-Sep;100(1-3):88-99. doi: 10.1016/j.jphysparis.2006.09.001. Epub 2006 Oct 24.

Abstract

The circuitry of cortical networks involves interacting populations of excitatory (E) and inhibitory (I) neurons whose relationships are now known to a large extent. Inputs to E- and I-cells may have their origins in remote or local cortical areas. We consider a rudimentary model involving E- and I-cells. One of our goals is to test an analytic approach to finding firing rates in neural networks without using a diffusion approximation and to this end we consider in detail networks of excitatory neurons with leaky integrate-and-fire (LIF) dynamics. A simple measure of synchronization, denoted by S(q), where q is between 0 and 100 is introduced. Fully connected E-networks have a large tendency to become dominated by synchronously firing groups of cells, except when inputs are relatively weak. We observed random or asynchronous firing in such networks with diverse sets of parameter values. When such firing patterns were found, the analytical approach was often able to accurately predict average neuronal firing rates. We also considered several properties of E-E networks, distinguishing several kinds of firing pattern. Included were those with silences before or after periods of intense activity or with periodic synchronization. We investigated the occurrence of synchronized firing with respect to changes in the internal excitatory postsynaptic potential (EPSP) magnitude in a network of 100 neurons with fixed values of the remaining parameters. When the internal EPSP size was less than a certain value, synchronization was absent. The amount of synchronization then increased slowly as the EPSP amplitude increased until at a particular EPSP size the amount of synchronization abruptly increased, with S(5) attaining the maximum value of 100%. We also found network frequency transfer characteristics for various network sizes and found a linear dependence of firing frequency over wide ranges of the external afferent frequency, with non-linear effects at lower input frequencies. The theory may also be applied to sparsely connected networks, whose firing behaviour was found to change abruptly as the probability of a connection passed through a critical value. The analytical method was also found to be useful for a feed-forward excitatory network and a network of excitatory and inhibitory neurons.

摘要

皮层网络的电路涉及兴奋性(E)和抑制性(I)神经元的相互作用群体,目前在很大程度上已经了解它们之间的关系。E 细胞和 I 细胞的输入可能起源于远程或局部皮层区域。我们考虑一个涉及 E 细胞和 I 细胞的基本模型。我们的目标之一是测试一种在不使用扩散近似的情况下寻找神经网络 firing 率的分析方法,为此我们详细考虑了具有漏电积分发放(LIF)动力学的兴奋性神经元网络。引入了一种简单的同步度量,用 S(q)表示,其中 q 在 0 到 100 之间。全连接的 E 网络有很大的趋势被同步发放的细胞群主导,除非输入相对较弱。我们在具有不同参数值集的此类网络中观察到随机或异步发放。当发现这种发放模式时,分析方法通常能够准确预测平均神经元发放率。我们还考虑了 E-E 网络的几个特性,区分了几种发放模式。包括在强烈活动期之前或之后有沉默期的模式或具有周期性同步的模式。我们研究了在其余参数固定值的 100 个神经元网络中,内部兴奋性突触后电位(EPSP)幅度变化时同步发放的发生情况。当内部 EPSP 大小小于某个值时,不存在同步。然后,随着 EPSP 幅度增加,同步量缓慢增加,直到在特定的 EPSP 大小时,同步量突然增加,S(5)达到最大值 100%。我们还发现了各种网络大小的网络频率传递特性,并发现发放频率在外部传入频率的广泛范围内呈线性依赖,在较低输入频率下有非线性效应。该理论也可应用于稀疏连接网络,其发放行为在连接概率通过临界值时会突然改变。还发现分析方法对前馈兴奋性网络以及兴奋性和抑制性神经元网络有用。

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