论文标题

局灶性癫痫发作扩散的预测和控制:随机步行与重新启动在异质大脑网络上

Prediction and Control of Focal Seizure Spread: Random Walk with Restart on Heterogeneous Brain Networks

论文作者

Wang, Chen, Chen, Sida, Huang, Liang, Yu, Lianchun

论文摘要

全脑模型提供了一种预测癫痫发作扩散的有前途的方法,这对于局灶性癫痫的成功手术治疗至关重要。现有方法主要基于结构连接组,它忽略了异质性在大脑区域兴奋性中的影响。在这项研究中,我们使用了一个全脑模型来表明淋巴结兴奋性的异质性对网络中的癫痫发作传播产生了重大影响,并损害了结构连接的预测准确性。然后,我们使用基于随机步行的算法解决了这个问题,并在图形上重新启动。我们证明,通过建立重新启动概率与每个节点的兴奋性之间的关系,该算法可以显着提高异质网络中的癫痫发作扩散预测准确性,并且在异质性的程度上更强大。我们还制定了手术癫痫发作控制,以识别和删除负责从焦点区域癫痫发作的早期传播的关键节点(连接)的过程。与基于结构连接的策略相比,基于MRWER的策略的虚拟手术产生了成功率很高的结果,同时通过消除较少的解剖学连接来维持对大脑的损害较低。这些发现可能在制定个性化手术策略的癫痫策略中可能有潜在的应用。

Whole-brain models offer a promising method of predicting seizure spread, which is critical for successful surgery treatment of focal epilepsy. Existing methods are largely based on structural connectome, which ignores the effects of heterogeneity in regional excitability of brains. In this study, we used a whole-brain model to show that heterogeneity in nodal excitability had a significant impact on seizure propagation in the networks, and compromised the prediction accuracy with structural connections. We then addressed this problem with an algorithm based on random walk with restart on graphs. We demonstrated that by establishing a relationship between the restarting probability and the excitability for each node, this algorithm could significantly improve the seizure spread prediction accuracy in heterogeneous networks, and was more robust against the extent of heterogeneity. We also strategized surgical seizure control as a process to identify and remove the key nodes (connections) responsible for the early spread of seizures from the focal region. Compared to strategies based on structural connections, virtual surgery with a strategy based on mRWER generated outcomes with a high success rate while maintaining low damage to the brain by removing fewer anatomical connections. These findings may have potential applications in developing personalized surgery strategies for epilepsy.

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