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Dynamic Network Connectivity Analysis to Identify Epileptogenic Zones Based on Stereo-Electroencephalography

机译:基于立体脑电图的动态网络连通性分析以识别癫痫区

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摘要

>Objectives: Accurate localization of epileptogenic zones (EZs) is essential for successful surgical treatment of refractory focal epilepsy. The aim of the present study is to investigate whether a dynamic network connectivity analysis based on stereo-electroencephalography (SEEG) signals is effective in localizing EZs.>Methods: SEEG data were recorded from seven patients who underwent presurgical evaluation for the treatment of refractory focal epilepsy and for whom the subsequent resective surgery gave a good outcome. A time-variant multivariate autoregressive model was constructed using a Kalman filter, and the time-variant partial directed coherence was computed. This was then used to construct a dynamic directed network model of the epileptic brain. Three graph measures (in-degree, out-degree, and betweenness centrality) were used to analyze the characteristics of the dynamic network and to find the important nodes in it.>Results: In all seven patients, the indicative EZs localized by the in-degree and the betweenness centrality were highly consistent with the clinically diagnosed EZs. However, the out-degree did not indicate any significant differences between nodes in the network.>Conclusions: In this work, a method based on ictal SEEG signals and effective connectivity analysis localized EZs accurately. The results suggest that the in-degree and betweenness centrality may be better network characteristics to localize EZs than the out-degree.
机译:>目标:准确定位癫痫发生区(EZ)对于成功治疗难治性局灶性癫痫至关重要。本研究的目的是研究基于立体脑电图(SEEG)信号的动态网络连通性分析对EZ定位是否有效。>方法:记录了7例接受术前评估的患者的SEEG数据难治性局灶性癫痫的治疗,并为之提供了良好的效果。使用卡尔曼滤波器构建时变多元自回归模型,并计算时变局部有向相干。然后将其用于构建癫痫脑的动态定向网络模型。使用三个图形度量(度数,度数和中间度)来分析动态网络的特征并查找其中的重要节点。>结果:在所有七名患者中,以度和中间度为中心定位的指示性EZ与临床诊断的EZ高度一致。但是,出学位程度并未表明网络中节点之间的任何显着差异。>结论:在这项工作中,一种基于短波SEEG信号和有效连通性分析的方法可以准确地定位EZ。结果表明,度内和中间度中心性可能比度外度更好地定位EZ。

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