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多单元神经元系统模型中的集体多稳定性动力学。

Dynamics of collective multi-stability in models of multi-unit neuronal systems.

机构信息

Stichting Epilepsie Instellingen Nederland, Achterweg 5, 2103 SW Heemstede, The Netherlands.

出版信息

Int J Neural Syst. 2014 Mar;24(2):1430004. doi: 10.1142/S0129065714300046. Epub 2014 Jan 13.

Abstract

In this study, we investigate the correspondence between dynamic patterns of behavior in two types of computational models of neuronal activity. The first model type is the realistic neuronal model; the second model type is the phenomenological or analytical model. In the simplest model set-up of two interconnected units, we define a parameter space for both types of systems where their behavior is similar. Next we expand the analytical model to two sets of 90 fully interconnected units with some overlap, which can display multi-stable behavior. This system can be in three classes of states: (i) a class consisting of a single resting state, where all units of a set are in steady state, (ii) a class consisting of multiple preserving states, where subsets of the units of a set participate in limit cycle, and (iii) a class consisting of a single saturated state, where all units of a set are recruited in a global limit cycle. In the third and final part of the work, we demonstrate that phase synchronization of units can be detected by a single output unit.

摘要

在这项研究中,我们研究了两种神经元活动计算模型中行为动态模式的对应关系。第一种模型类型是现实神经元模型;第二种模型类型是现象学或分析模型。在最简单的两个互联单元模型设置中,我们为两种系统定义了一个参数空间,在该空间中它们的行为相似。接下来,我们将分析模型扩展到两组 90 个完全互联的单元,并设置一些重叠,这些单元可以显示多稳定行为。该系统可以处于三种状态类别:(i)由单个静息状态组成的类别,其中一组的所有单元都处于稳定状态;(ii)由多个保持状态组成的类别,其中一组的子集单元参与极限环;(iii)由单个饱和状态组成的类别,其中一组的所有单元都被招募到全局极限环中。在工作的第三部分,即最后一部分,我们证明了通过单个输出单元可以检测到单元的相位同步。

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