Department of Pediatrics, University of Tennessee Health Science Center, Memphis, TN, USA; Le Bonheur Children's Hospital, Neuroscience Institute, Memphis, TN, USA; Department of Anatomy and Neurobiology, University of Tennessee Health Science Center, Memphis, TN, USA.
Department of Pediatrics, University of Tennessee Health Science Center, Memphis, TN, USA; Le Bonheur Children's Hospital, Neuroscience Institute, Memphis, TN, USA.
Neuroimage Clin. 2018 Jun 18;19:990-999. doi: 10.1016/j.nicl.2018.06.017. eCollection 2018.
Vagus nerve stimulation (VNS) is a low-risk surgical option for patients with drug resistant epilepsy, although it is impossible to predict which patients may respond to VNS treatment. Resting-state magnetoencephalography (rs-MEG) connectivity analysis has been increasingly utilized to investigate the impact of epilepsy on brain networks and identify alteration of these networks after different treatments; however, there is no study to date utilizing this modality to predict the efficacy of VNS treatment. We investigated whether the rs-MEG network topology before VNS implantation can be used to predict efficacy of VNS treatment. Twenty-three patients with epilepsy who had MEG before VNS implantation were included in this study. We also included 89 healthy control subjects from the Human Connectome Project. Using the phase-locking value in the theta, alpha, and beta frequency bands as a measure of rs-MEG functional connectivity, we calculated three global graph measures: modularity, transitivity, and characteristic path length (CPL). Our results revealed that the rs-MEG graph measures were significantly heritable and had an overall good test-retest reliability, and thus these measures may be used as potential biomarkers of the network topology. We found that the modularity and transitivity in VNS responders were significantly larger and smaller, respectively, than those observed in VNS non-responders. We also observed that the modularity and transitivity in three frequency bands and CPL in delta and beta bands were significantly different in controls than those found in responders or non-responders, although the values of the graph measures in controls were closer to those of responders than non-responders. We used the modularity and transitivity as input features of a naïve Bayes classifier, and achieved an accuracy of 87% in classification of non-responders, responders, and controls. The results of this study revealed that MEG-based graph measures are reliable biomarkers, and that these measures may be used to predict seizure outcome of VNS treatment.
迷走神经刺激(Vagus nerve stimulation,VNS)是一种治疗耐药性癫痫的低风险手术选择,尽管无法预测哪些患者可能对 VNS 治疗有反应。静息态脑磁图(resting-state magnetoencephalography,rs-MEG)连接分析已越来越多地用于研究癫痫对大脑网络的影响,并确定不同治疗方法后这些网络的变化;然而,迄今为止,尚无利用该模态预测 VNS 治疗效果的研究。我们研究了 VNS 植入前 rs-MEG 网络拓扑结构是否可用于预测 VNS 治疗效果。本研究纳入了 23 例 VNS 植入前进行 MEG 的癫痫患者,并纳入了来自人类连接组计划的 89 例健康对照者。我们使用 theta、alpha 和 beta 频段的锁相值作为 rs-MEG 功能连接的度量,计算了三个全局图度量:模块度、传递性和特征路径长度(characteristic path length,CPL)。结果显示,rs-MEG 图度量具有显著的遗传性和良好的总体测试-重测可靠性,因此这些度量可能作为网络拓扑的潜在生物标志物。我们发现,VNS 应答者的模块度和传递性分别显著大于和小于 VNS 无应答者。我们还观察到,在 delta 和 beta 频段的三个频带中的模块度和传递性以及 CPL 与对照组相比,在应答者和无应答者中存在显著差异,尽管对照组的图度量值与应答者更接近而不是无应答者。我们将模块度和传递性作为朴素贝叶斯分类器的输入特征,在无应答者、应答者和对照组的分类中达到了 87%的准确率。这项研究的结果表明,基于 MEG 的图度量是可靠的生物标志物,并且这些度量可能用于预测 VNS 治疗的癫痫发作结果。