Breakspear Michael, Heitmann Stewart, Daffertshofer Andreas
School of Psychiatry, University of New South Wales Sydney, NSW, Australia.
Front Hum Neurosci. 2010 Nov 11;4:190. doi: 10.3389/fnhum.2010.00190. eCollection 2010.
Understanding the fundamental mechanisms governing fluctuating oscillations in large-scale cortical circuits is a crucial prelude to a proper knowledge of their role in both adaptive and pathological cortical processes. Neuroscience research in this area has much to gain from understanding the Kuramoto model, a mathematical model that speaks to the very nature of coupled oscillating processes, and which has elucidated the core mechanisms of a range of biological and physical phenomena. In this paper, we provide a brief introduction to the Kuramoto model in its original, rather abstract, form and then focus on modifications that increase its neurobiological plausibility by incorporating topological properties of local cortical connectivity. The extended model elicits elaborate spatial patterns of synchronous oscillations that exhibit persistent dynamical instabilities reminiscent of cortical activity. We review how the Kuramoto model may be recast from an ordinary differential equation to a population level description using the nonlinear Fokker-Planck equation. We argue that such formulations are able to provide a mechanistic and unifying explanation of oscillatory phenomena in the human cortex, such as fluctuating beta oscillations, and their relationship to basic computational processes including multistability, criticality, and information capacity.
理解大规模皮层回路中波动振荡的基本机制,是正确认识其在适应性和病理性皮层过程中作用的关键前奏。该领域的神经科学研究能从理解Kuramoto模型中受益匪浅,这是一个涉及耦合振荡过程本质的数学模型,它阐明了一系列生物和物理现象的核心机制。在本文中,我们首先简要介绍原始的、相当抽象形式的Kuramoto模型,然后重点关注通过纳入局部皮层连接的拓扑特性来增加其神经生物学合理性的修改。扩展模型引发了同步振荡的精细空间模式,这些模式表现出持续的动态不稳定性,让人联想到皮层活动。我们回顾了如何使用非线性福克 - 普朗克方程将Kuramoto模型从常微分方程转换为群体水平描述。我们认为,这种公式能够为人类皮层中的振荡现象,如波动的β振荡,以及它们与包括多稳定性、临界性和信息容量在内的基本计算过程的关系,提供一个机械且统一的解释。