Department of Biomedical Engineering, The University of Melbourne, Parkville, Australia.
Department of Medicine, St Vincent's Hospital, The University of Melbourne, Fitzroy, Australia.
PLoS Comput Biol. 2018 Oct 11;14(10):e1006403. doi: 10.1371/journal.pcbi.1006403. eCollection 2018 Oct.
We present the results of a model inversion algorithm for electrocorticography (ECoG) data recorded during epileptic seizures. The states and parameters of neural mass models were tracked during a total of over 3000 seizures from twelve patients with focal epilepsy. These models provide an estimate of the effective connectivity within intracortical circuits over the time course of seizures. Observing the dynamics of effective connectivity provides insight into mechanisms of seizures. Estimation of patients seizure dynamics revealed: 1) a highly stereotyped pattern of evolution for each patient, 2) distinct sub-groups of onset mechanisms amongst patients, and 3) different offset mechanisms for long and short seizures. Stereotypical dynamics suggest that, once initiated, seizures follow a deterministic path through the parameter space of a neural model. Furthermore, distinct sub-populations of patients were identified based on characteristic motifs in the dynamics at seizure onset. There were also distinct patterns between long and short duration seizures that were related to seizure offset. Understanding how these different patterns of seizure evolution arise may provide new insights into brain function and guide treatment for epilepsy, since specific therapies may have preferential effects on the various parameters that could potentially be individualized. Methods that unite computational models with data provide a powerful means to generate testable hypotheses for further experimental research. This work provides a demonstration that the hidden connectivity parameters of a neural mass model can be dynamically inferred from data. Our results underscore the power of theoretical models to inform epilepsy management. It is our hope that this work guides further efforts to apply computational models to clinical data.
我们提出了一种针对脑电描记术(ECoG)数据的模型反演算法的结果,这些数据是在 12 名局灶性癫痫患者的 3000 多次癫痫发作期间记录的。这些模型提供了对皮质内回路中有效连接随时间变化的估计。观察有效连接的动力学提供了对癫痫发作机制的深入了解。对患者发作动力学的估计揭示了:1)每个患者都有高度定型的演变模式,2)患者之间存在不同的起始机制亚组,3)长发作和短发作有不同的结束机制。定型动力学表明,一旦发作开始,癫痫就会沿着神经模型参数空间的确定路径发展。此外,根据发作起始时动力学的特征模式,还可以识别出不同的患者亚群。长发作和短发作之间也存在不同的模式,这些模式与发作结束有关。了解这些不同的癫痫发作演变模式是如何产生的,可能为脑功能提供新的见解,并指导癫痫的治疗,因为特定的治疗方法可能对各种参数具有优先影响,这些参数可能是个体化的。将计算模型与数据相结合的方法为进一步的实验研究提供了生成可检验假设的有力手段。这项工作证明了可以从数据中动态推断神经质量模型的隐藏连接参数。我们的结果强调了理论模型在癫痫管理中的强大作用。我们希望这项工作能指导进一步努力将计算模型应用于临床数据。