Bio, Electro And Mechanical Systems (BEAMS), Université Libre de Bruxelles (ULB), Brussels, Belgium.
Department of Neurology, Hôpital Erasme, Université Libre de Bruxelles (ULB), Brussels, Belgium.
Eur J Neurosci. 2018 Nov;48(9):3097-3112. doi: 10.1111/ejn.14142. Epub 2018 Sep 24.
Physiologically based models could facilitate better understanding of mechanisms underlying epileptic seizures. In this paper, we attempt to reveal the dynamic evolution of intracranial EEG activity during epileptic seizures based on synaptic gain identification procedure of a neural mass model. The distribution of average excitatory, slow and fast inhibitory synaptic gain in the parameter space and their temporal evolution, i.e., the path through the model parameter space, were analyzed in thirty seizures from ten temporal lobe epileptic patients. Results showed that the synaptic gain values located roughly on a plane before seizure onset, dispersed during seizure and returned to the plane when seizure terminated. Cluster analysis was performed on seizure paths and demonstrated consistency in synaptic gain evolution across different seizures from the individual patient. Furthermore, two patient groups were identified, each one corresponding to a specific synaptic gain evolution in the parameter space during a seizure. Results were validated by a bootstrapping approach based on comparison with random paths. The differences in the path revealed variations in EEG dynamics for patients despite showing identical seizure onset pattern. Our approach may have the potential to classify the epileptic patients into subgroups based on different mechanisms revealed by subtle changes in synaptic gains and further enable more robust decisions regarding treatment strategy.
基于生理学的模型可以帮助更好地理解癫痫发作的机制。在本文中,我们尝试基于神经网络群模型的突触增益识别过程来揭示癫痫发作期间颅内 EEG 活动的动态演变。在十名颞叶癫痫患者的三十次发作中,分析了参数空间中平均兴奋性、慢和快抑制性突触增益的分布及其时间演变,即通过模型参数空间的路径。结果表明,在发作前,突触增益值大致位于一个平面上,在发作期间分散,在发作结束时返回平面。对发作路径进行聚类分析,证明了个体患者不同发作之间的突触增益演化具有一致性。此外,还确定了两个患者组,每组对应于发作期间参数空间中特定的突触增益演化。通过基于与随机路径比较的引导抽样方法验证了结果。尽管发作起始模式相同,但路径的差异揭示了患者 EEG 动力学的变化。我们的方法有可能根据突触增益的细微变化揭示的不同机制将癫痫患者分为亚组,并进一步能够更稳健地做出关于治疗策略的决策。