Lopes Marinho A, Richardson Mark P, Abela Eugenio, Rummel Christian, Schindler Kaspar, Goodfellow Marc, Terry John R
Living Systems Institute, University of Exeter, Exeter, United Kingdom.
Wellcome Trust Centre for Biomedical Modelling and Analysis, University of Exeter, Exeter, United Kingdom.
PLoS Comput Biol. 2017 Aug 17;13(8):e1005637. doi: 10.1371/journal.pcbi.1005637. eCollection 2017 Aug.
Surgery is a therapeutic option for people with epilepsy whose seizures are not controlled by anti-epilepsy drugs. In pre-surgical planning, an array of data modalities, often including intra-cranial EEG, is used in an attempt to map regions of the brain thought to be crucial for the generation of seizures. These regions are then resected with the hope that the individual is rendered seizure free as a consequence. However, post-operative seizure freedom is currently sub-optimal, suggesting that the pre-surgical assessment may be improved by taking advantage of a mechanistic understanding of seizure generation in large brain networks. Herein we use mathematical models to uncover the relative contribution of regions of the brain to seizure generation and consequently which brain regions should be considered for resection. A critical advantage of this modeling approach is that the effect of different surgical strategies can be predicted and quantitatively compared in advance of surgery. Herein we seek to understand seizure generation in networks with different topologies and study how the removal of different nodes in these networks reduces the occurrence of seizures. Since this a computationally demanding problem, a first step for this aim is to facilitate tractability of this approach for large networks. To do this, we demonstrate that predictions arising from a neural mass model are preserved in a lower dimensional, canonical model that is quicker to simulate. We then use this simpler model to study the emergence of seizures in artificial networks with different topologies, and calculate which nodes should be removed to render the network seizure free. We find that for scale-free and rich-club networks there exist specific nodes that are critical for seizure generation and should therefore be removed, whereas for small-world networks the strategy should instead focus on removing sufficient brain tissue. We demonstrate the validity of our approach by analysing intra-cranial EEG recordings from a database comprising 16 patients who have undergone epilepsy surgery, revealing rich-club structures within the obtained functional networks. We show that the postsurgical outcome for these patients was better when a greater proportion of the rich club was removed, in agreement with our theoretical predictions.
对于癫痫发作无法通过抗癫痫药物控制的患者,手术是一种治疗选择。在术前规划中,通常会使用一系列数据模式,常常包括颅内脑电图,试图绘制出被认为对癫痫发作产生至关重要的脑区。然后切除这些区域,希望患者因此不再发作。然而,目前术后无癫痫发作的情况并不理想,这表明通过利用对大脑大网络中癫痫发作产生的机制性理解,术前评估可能会得到改善。在此,我们使用数学模型来揭示脑区对癫痫发作产生的相对贡献,从而确定哪些脑区应考虑切除。这种建模方法的一个关键优势在于,不同手术策略的效果可以在手术前提前预测并进行定量比较。在此,我们试图了解具有不同拓扑结构的网络中的癫痫发作产生情况,并研究在这些网络中去除不同节点如何减少癫痫发作的发生。由于这是一个计算量很大的问题,实现这一目标的第一步是使这种方法对于大型网络具有可处理性。为此,我们证明了神经质量模型产生的预测在一个维度更低、模拟速度更快的规范模型中得以保留。然后我们使用这个更简单的模型来研究具有不同拓扑结构的人工网络中癫痫发作的出现,并计算应去除哪些节点以使网络不再发作。我们发现,对于无标度网络和富俱乐部网络,存在对癫痫发作产生至关重要的特定节点,因此应该去除,而对于小世界网络,策略则应侧重于去除足够的脑组织。我们通过分析来自一个包含16名接受癫痫手术患者的数据库中的颅内脑电图记录,证明了我们方法的有效性,揭示了在获得的功能网络中存在富俱乐部结构。我们表明,当去除更大比例的富俱乐部时,这些患者的术后结果更好,这与我们的理论预测一致。