Vuksanović Vesna, Hövel Philipp
Institut für Theoretische Physik, Technische Universität Berlin, Hardenbergstraße 36, 10623 Berlin, Germany.
Chaos. 2015 Feb;25(2):023116. doi: 10.1063/1.4913526.
Experimental functional magnetic resonance imaging studies have shown that spontaneous brain activity, i.e., in the absence of any external input, exhibit complex spatial and temporal patterns of co-activity between segregated brain regions. These so-called large-scale resting-state functional connectivity networks represent dynamically organized neural assemblies interacting with each other in a complex way. It has been suggested that looking at the dynamical properties of complex patterns of brain functional co-activity may reveal neural mechanisms underlying the dynamic changes in functional interactions. Here, we examine how global network dynamics is shaped by different network configurations, derived from realistic brain functional interactions. We focus on two main dynamics measures: synchrony and variations in synchrony. Neural activity and the inferred hemodynamic response of the network nodes are simulated using a system of 90 FitzHugh-Nagumo neural models subject to system noise and time-delayed interactions. These models are embedded into the topology of the complex brain functional interactions, whose architecture is additionally reduced to its main structural pathways. In the simulated functional networks, patterns of correlated regional activity clearly arise from dynamical properties that maximize synchrony and variations in synchrony. Our results on the fast changes of the level of the network synchrony also show how flexible changes in the large-scale network dynamics could be.
实验性功能磁共振成像研究表明,自发脑活动,即在没有任何外部输入的情况下,在分离的脑区之间呈现出复杂的空间和时间共活动模式。这些所谓的大规模静息态功能连接网络代表了以复杂方式相互作用的动态组织的神经集合。有人提出,观察脑功能共活动复杂模式的动态特性可能揭示功能相互作用动态变化背后的神经机制。在这里,我们研究了由现实脑功能相互作用衍生出的不同网络配置如何塑造全局网络动态。我们关注两个主要的动态测量指标:同步性和同步性变化。使用一个包含90个FitzHugh-Nagumo神经模型的系统来模拟网络节点的神经活动和推断的血液动力学反应,该系统受系统噪声和时间延迟相互作用的影响。这些模型被嵌入到复杂脑功能相互作用的拓扑结构中,其结构还被简化为主要的结构路径。在模拟的功能网络中,相关区域活动的模式明显源于使同步性和同步性变化最大化的动态特性。我们关于网络同步水平快速变化的结果也表明,大规模网络动态的灵活变化可能是怎样的。