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Dynamic effective connectivity in cortically embedded systems of recurrently coupled synfire chains

机译:循环耦合synfire链的皮质嵌入式系统中的动态有效连接

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摘要

As a candidate mechanism of neural representation, large numbers of synfire chains can efficiently be embedded in a balanced recurrent cortical network model. Here we study a model in which multiple synfire chains of variable strength are randomly coupled together to form a recurrent system. The system can be implemented both as a large-scale network of integrate-and-fire neurons and as a reduced model. The latter has binary-state pools as basic units but is otherwise isomorphic to the large-scale model, and provides an efficient tool for studying its behavior. Both the large-scale system and its reduced counterpart are able to sustain ongoing endogenous activity in the form of synfire waves, the proliferation of which is regulated by negative feedback caused by collateral noise. Within this equilibrium, diverse repertoires of ongoing activity are observed, including meta-stability and multiple steady states. These states arise in concert with an effective connectivity structure (ECS). The ECS admits a family of effective connectivity graphs (ECGs), parametrized by the mean global activity level. Of these graphs, the strongly connected components and their associated out-components account to a large extent for the observed steady states of the system. These results imply a notion of dynamic effective connectivity as governing neural computation with synfire chains, and related forms of cortical circuitry with complex topologies. >Electronic supplementary material The online version of this article (doi:10.1007/s10827-015-0581-5) contains supplementary material, which is available to authorized users.
机译:作为神经表示的候选机制,大量synfire链可以有效地嵌入平衡的循环皮层网络模型中。在这里,我们研究了一个模型,其中多个强度可变的synfire链随机耦合在一起以形成循环系统。该系统既可以实现为集成并发射神经元的大规模网络,也可以实现为简化模型。后者以二进制状态池为基本单位,但对于大型模型则是同构的,并为研究其行为提供了有效的工具。大型系统及其缩减的系统都能够以合成火波的形式维持正在进行的内源性活动​​,合成火的扩散受到附带噪声引起的负反馈的调节。在这种平衡下,观察到正在进行的活动的各种曲目,包括亚稳定性和多个稳态。这些状态与有效的连接结构(ECS)共同出现。 ECS接受一系列有效连接图(ECG),这些图由全球平均活动水平确定。在这些图中,强连接的组件及其关联的外部组件在很大程度上代表了观察到的系统稳态。这些结果暗示了一种动态有效连通性的概念,即通过synfire链控制神经计算以及具有复杂拓扑结构的皮质电路的相关形式。 >电子补充材料本文的在线版本(doi:10.1007 / s10827-015-0581-5)包含补充材料,授权用户可以使用。

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