Department of Complex Systems, Institute of Computer Science, Czech Academy of Sciences, Prague, Czech Republic.
Department of Physiology, Second Faculty of Medicine, Charles University, Prague, Czech Republic.
Epilepsia. 2023 Sep;64(9):2221-2238. doi: 10.1111/epi.17690. Epub 2023 Jul 10.
Epilepsy is a common neurological disorder, with one third of patients not responding to currently available antiepileptic drugs. The proportion of pharmacoresistant epilepsies has remained unchanged for many decades. To cure epilepsy and control seizures requires a paradigm shift in the development of new approaches to epilepsy diagnosis and treatment. Contemporary medicine has benefited from the exponential growth of computational modeling, and the application of network dynamics theory to understanding and treating human brain disorders. In epilepsy, the introduction of these approaches has led to personalized epileptic network modeling that can explore the patient's seizure genesis and predict the functional impact of resection on its individual network's propensity to seize. The application of the dynamic systems approach to neurostimulation therapy of epilepsy allows designing stimulation strategies that consider the patient's seizure dynamics and long-term fluctuations in the stability of their epileptic networks. In this article, we review, in a nontechnical fashion suitable for a broad neuroscientific audience, recent progress in personalized dynamic brain network modeling that is shaping the future approach to the diagnosis and treatment of epilepsy.
癫痫是一种常见的神经系统疾病,有三分之一的患者对现有的抗癫痫药物没有反应。几十年来,耐药性癫痫的比例一直没有变化。要治愈癫痫并控制癫痫发作,需要在癫痫诊断和治疗的新方法的发展中实现范式转变。当代医学受益于计算建模的指数级增长,以及网络动力学理论在理解和治疗人类大脑疾病方面的应用。在癫痫中,这些方法的引入导致了个性化癫痫网络建模,可以探索患者的癫痫发作起源,并预测切除对其个体网络发作倾向的功能影响。动态系统方法在癫痫神经刺激治疗中的应用允许设计考虑患者癫痫发作动力学和其癫痫网络稳定性长期波动的刺激策略。在本文中,我们以适合广泛神经科学界的非技术性方式回顾了个性化动态脑网络建模的最新进展,这些进展正在塑造未来癫痫的诊断和治疗方法。