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朝向兴奋神经网络的共激活模式理论。

Toward a theory of coactivation patterns in excitable neural networks.

机构信息

Institute of Computational Neuroscience, University Medical Center Eppendorf, Hamburg University, Hamburg, Germany.

Department of Life Sciences and Chemistry, Jacobs University, Bremen, Germany.

出版信息

PLoS Comput Biol. 2018 Apr 9;14(4):e1006084. doi: 10.1371/journal.pcbi.1006084. eCollection 2018 Apr.

Abstract

The relationship between the structural connectivity (SC) and functional connectivity (FC) of neural systems is of central importance in brain network science. It is an open question, however, how the SC-FC relationship depends on specific topological features of brain networks or the models used for describing neural dynamics. Using a basic but general model of discrete excitable units that follow a susceptible-excited-refractory activity cycle (SER model), we here analyze how the network activity patterns underlying functional connectivity are shaped by the characteristic topological features of the network. We develop an analytical framework for describing the contribution of essential topological elements, such as common inputs and pacemakers, to the coactivation of nodes, and demonstrate the validity of the approach by comparison of the analytical predictions with numerical simulations of various exemplar networks. The present analytic framework may serve as an initial step for the mechanistic understanding of the contributions of brain network topology to brain dynamics.

摘要

神经系统的结构连接(SC)和功能连接(FC)之间的关系是脑网络科学的核心问题。然而,SC-FC 关系如何取决于脑网络的特定拓扑特征或用于描述神经动力学的模型,这仍是一个悬而未决的问题。使用遵循易感性-兴奋-不应期活动周期(SER 模型)的离散可兴奋单元的基本但通用模型,我们在这里分析了功能连接所基于的网络活动模式如何受到网络特征拓扑的影响。我们开发了一个分析框架来描述基本拓扑元素(如共同输入和起搏器)对节点共激活的贡献,并通过将分析预测与各种范例网络的数值模拟进行比较来验证该方法的有效性。本分析框架可以作为理解脑网络拓扑结构对脑动力学贡献的机制的初步步骤。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1aaf/5908206/269ca63ba5a9/pcbi.1006084.g001.jpg

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