Ranjan Avinash, Gandhi Saurabh R
Department of Electrical Engineering, Indian Institute of Technology Delhi, New Delhi, India.
Center for Brain Science and Applications, School of Artificial Intelligence and Data Science, Indian Institute of Technology, Jodhpur, India.
Netw Neurosci. 2024 Oct 1;8(3):883-901. doi: 10.1162/netn_a_00379. eCollection 2024.
Generalized epileptic attacks, which exhibit widespread disruption of brain activity, are characterized by recurrent, spontaneous, and synchronized bursts of neural activity that self-initiate and self-terminate through critical transitions. Here we utilize the general framework of explosive synchronization (ES) from complex systems science to study the role of network structure and resource dynamics in the generation and propagation of seizures. We show that a combination of resource constraint and adaptive coupling in a Kuramoto network oscillator model can reliably generate seizure-like synchronization activity across different network topologies, including a biologically derived mesoscale mouse brain network. The model, coupled with a novel algorithm for tracking seizure propagation, provides mechanistic insight into the dynamics of transition to the synchronized state and its dependence on resources; and identifies key brain areas that may be involved in the initiation and spatial propagation of the seizure. The model, though minimal, efficiently recapitulates several experimental and theoretical predictions from more complex models and makes novel experimentally testable predictions.
全身性癫痫发作表现为大脑活动的广泛紊乱,其特征是神经活动反复、自发且同步地爆发,并通过临界转变自我启动和自我终止。在这里,我们利用复杂系统科学中的爆发性同步(ES)通用框架,来研究网络结构和资源动态在癫痫发作的产生和传播中的作用。我们表明,在Kuramoto网络振荡器模型中,资源约束和自适应耦合相结合,能够在不同的网络拓扑结构中可靠地产生类似癫痫发作的同步活动,包括一个源自生物学的中尺度小鼠脑网络。该模型与一种用于跟踪癫痫发作传播的新算法相结合,为向同步状态转变的动力学及其对资源的依赖性提供了机制性见解;并识别出可能参与癫痫发作起始和空间传播的关键脑区。该模型虽然简单,但有效地概括了更复杂模型的几个实验和理论预测,并做出了新的可实验验证的预测。