Shusterman Vladimir, Troy William C
Cardiovascular Institute and Department of Mathematics, University of Pittsburgh, Pittsburgh, Pennsylvania 15213, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2008 Jun;77(6 Pt 1):061911. doi: 10.1103/PhysRevE.77.061911. Epub 2008 Jun 16.
In large-scale neural networks in the brain the emergence of global behavioral patterns, manifested by electroencephalographic activity, is driven by the self-organization of local neuronal groups into synchronously functioning ensembles. However, the laws governing such macrobehavior and its disturbances, in particular epileptic seizures, are poorly understood. Here we use a mean-field population network model to describe a state of baseline physiological activity and the transition from the baseline state to rhythmic epileptiform activity. We describe principles which explain how this rhythmic activity arises in the form of spatially uniform self-sustained synchronous oscillations. In addition, we show how the rate of migration of the leading edge of the synchronous oscillations can be theoretically predicted, and compare the accuracy of this prediction with that measured experimentally using multichannel electrocorticographic recordings obtained from a human subject experiencing epileptic seizures. The comparison shows that the experimentally measured rate of migration of the leading edge of synchronous oscillations is within the theoretically predicted range of values. Computer simulations have been performed to investigate the interactions between different regions of the brain and to show how organization in one spatial region can promote or inhibit organization in another. Our theoretical predictions are also consistent with the results of functional magnetic resonance imaging (fMRI), in particular with observations that lower-frequency electroencephalographic (EEG) rhythms entrain larger areas of the brain than higher-frequency rhythms. These findings advance the understanding of functional behavior of interconnected populations and might have implications for the analysis of diverse classes of networks.
在大脑的大规模神经网络中,以脑电图活动为表现的全局行为模式的出现,是由局部神经元群体自组织成同步运作的集合所驱动的。然而,支配这种宏观行为及其紊乱(特别是癫痫发作)的规律却鲜为人知。在这里,我们使用平均场群体网络模型来描述基线生理活动状态以及从基线状态到节律性癫痫样活动的转变。我们阐述了一些原理,这些原理解释了这种节律性活动如何以空间均匀的自持同步振荡形式出现。此外,我们展示了如何从理论上预测同步振荡前沿的迁移速率,并将这一预测的准确性与使用从一名癫痫发作患者获得的多通道皮层脑电图记录进行实验测量的结果进行比较。比较结果表明,同步振荡前沿的实验测量迁移速率在理论预测的值范围内。我们进行了计算机模拟,以研究大脑不同区域之间的相互作用,并展示一个空间区域的组织如何促进或抑制另一个区域的组织。我们的理论预测也与功能磁共振成像(fMRI)的结果一致,特别是与低频脑电图(EEG)节律比高频节律能带动大脑更大区域的观察结果一致。这些发现推进了对相互连接群体功能行为的理解,可能对各类网络的分析具有启示意义。