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A Model-Based Assessment of the Seizure Onset Zone Predictive Power to Inform the Epileptogenic Zone

机译:基于模型的癫痫发作区预测能力告知癫痫发生区的预测能力。

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摘要

Epilepsy surgery is a clinical procedure that aims to remove the brain tissue responsible for the emergence of seizures, the epileptogenic zone (EZ). It is preceded by an evaluation to determine the brain tissue that must be resected. The identification of the seizure onset zone (SOZ) from intracranial EEG recordings stands as one of the key proxies for the EZ. In this study we used computational models of epilepsy to assess to what extent the SOZ may or may not represent the EZ. We considered a set of different synthetic networks (e.g., regular, small-world, random, and scale-free networks) to represent large-scale brain networks and a phenomenological network model of seizure generation. In the model, the SOZ was inferred from the seizure likelihood (SL), a measure of the propensity of single nodes to produce epileptiform dynamics, whilst a surgery corresponded to the removal of nodes and connections from the network. We used the concept of node ictogenicity (NI) to quantify the effectiveness of each node removal on reducing the network's propensity to generate seizures. This framework enabled us to systematically compare the SOZ and the seizure control achieved by each considered surgery. Specifically, we compared the distributions of SL and NI across different networks. We found that SL and NI were concordant when all nodes were similarly ictogenic, whereas when there was a small fraction of nodes with high NI, the SL was not specific at identifying these nodes. We further considered networks with heterogeneous node excitabilities, i.e., nodes with different susceptibilities of being engaged in seizure activity, to understand how such heterogeneity may affect the relationship between SL and NI. We found that while SL and NI are concordant when there is a small fraction of hyper-excitable nodes in a network that is otherwise homogeneous, they do diverge if the network is heterogeneous, such as in scale-free networks. We observe that SL is highly dependent on node excitabilities, whilst the effect of surgical resections as revealed by NI is mostly determined by network structure. Together our results suggest that the SOZ is not always a good marker of the EZ.
机译:癫痫手术是一种临床程序,旨在去除造成癫痫发作的区域-癫痫发生区(EZ)。在进行评估之前,必须确定必须切除的脑组织。从颅内EEG记录中识别癫痫发作区(SOZ)是EZ的主要代表之一。在这项研究中,我们使用癫痫的计算模型来评估SOZ在何种程度上可以代表EZ。我们考虑了一组不同的合成网络(例如,常规,小世界,随机和无标度网络)来代表大规模脑网络和癫痫发作的现象学网络模型。在模型中,从癫痫发作可能性(SL)推断出SOZ,癫痫发作可能性是对单个结点产生癫痫状动力学倾向的一种度量,而手术对应于从网络中删除结点和连接。我们使用节点致烟性(NI)的概念来量化每个节点移除在降低网络产生癫痫发作倾向方面的有效性。该框架使我们能够系统地比较每种考虑的手术所达到的SOZ和癫痫发作控制。具体来说,我们比较了SL和NI在不同网络上的分布。我们发现,当所有节点都具有相似的黄原色时,SL和NI是一致的,而当一小部分具有较高NI的节点时,SL并不能专门识别这些节点。我们进一步考虑了具有异类节点兴奋性的网络,即参与癫痫发作活动的敏感性不同的节点,以了解这种异质性如何影响SL和NI之间的关系。我们发现,当网络中有一小部分超激励节点本来是同质的时,SL和NI是一致的,但如果网络是异构的(例如在无标度网络中),它们确实会发散。我们观察到SL高度依赖于节点的兴奋性,而NI揭示的手术切除效果主要取决于网络结构。我们的研究结果共同表明,SOZ并不总是EZ的良好标志。

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