Yuri Gagarin State Technical University of Saratov, REC "Nonlinear Dynamics of Complex Systems," Saratov 410054, Russia.
University of Münster, Institute of Physiology I, Münster 48149, Germany.
Phys Rev E. 2017 Jul;96(1-1):012316. doi: 10.1103/PhysRevE.96.012316. Epub 2017 Jul 20.
We introduce a practical and computationally not demanding technique for inferring interactions at various microscopic levels between the units of a network from the measurements and the processing of macroscopic signals. Starting from a network model of Kuramoto phase oscillators, which evolve adaptively according to homophilic and homeostatic adaptive principles, we give evidence that the increase of synchronization within groups of nodes (and the corresponding formation of synchronous clusters) causes also the defragmentation of the wavelet energy spectrum of the macroscopic signal. Our methodology is then applied to getting a glance into the microscopic interactions occurring in a neurophysiological system, namely, in the thalamocortical neural network of an epileptic brain of a rat, where the group electrical activity is registered by means of multichannel EEG. We demonstrate that it is possible to infer the degree of interaction between the interconnected regions of the brain during different types of brain activities and to estimate the regions' participation in the generation of the different levels of consciousness.
我们介绍了一种实用且计算要求不高的技术,可从测量和宏观信号处理中推断网络单元之间在各种微观层面上的相互作用。从根据同型亲和和同型稳态自适应原则自适应演化的 Kuramoto 相位振荡器网络模型出发,我们证明了节点群内同步的增加(以及相应的同步簇的形成)也导致宏观信号的小波能谱的去碎片化。然后,我们将该方法应用于观察发生在神经生理系统中的微观相互作用,即大鼠癫痫大脑的丘脑皮质神经网络中,通过多通道 EEG 记录群集的电活动。我们证明,在不同类型的大脑活动期间,可以推断出相互连接的大脑区域之间的相互作用程度,并估计区域在不同意识水平的产生中的参与程度。