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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Exploring the Epileptic Brain Network Using Time-Variant Effective Connectivity and Graph Theory
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Exploring the Epileptic Brain Network Using Time-Variant Effective Connectivity and Graph Theory

机译:使用时变有效连通性和图论探索癫痫脑网络

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The application of time-varying measures of causality between source time series can be very informative to elucidate the direction of communication among the regions of an epileptic brain. The aim of the study was to identify the dynamic patterns of epileptic networks in focal epilepsy by applying multivariate adaptive directed transfer function (ADTF) analysis and graph theory to high-density electroencephalographic recordings. The cortical network was modeled after source reconstruction and topology modulations were detected during interictal spikes. First a distributed linear inverse solution, constrained to the individual grey matter, was applied to the averaged spikes and the mean source activity over 112 regions, as identified by the Harvard-Oxford Atlas, was calculated. Then, the ADTF, a dynamic measure of causality, was used to quantify the connectivity strength between pairs of regions acting as nodes in the graph, and the measure of node centrality was derived. The proposed analysis was effective in detecting the focal regions as well as in characterizing the dynamics of the spike propagation, providing evidence of the fact that the node centrality is a reliable feature for the identification of the epileptogenic zones. Validation was performed by multimodal analysis as well as from surgical outcomes. In conclusion, the time-variant connectivity analysis applied to the epileptic patients can distinguish the generator of the abnormal activity from the propagation spread and identify the connectivity pattern over time.
机译:源时间序列之间因果关系的时变测量方法的应用对于阐明癫痫脑区域之间的交流方向可能非常有用。这项研究的目的是通过将多变量自适应定向传递函数(ADTF)分析和图论应用于高密度脑电图记录,来确定局灶性癫痫中癫痫网络的动态模式。皮质网络建模后源重建和拓扑调制检测到尖峰期间。首先,将受单个灰质约束的分布式线性逆解应用于平均峰值,然后计算由哈佛-牛津地图集确定的112个区域的平均源活动。然后,使用ADTF(因果关系的动态度量)来量化图中作为节点的区域对之间的连接强度,并得出节点中心性的度量。所提出的分析在检测病灶区域以及表征刺突传播的动力学方面是有效的,提供了以下事实的证据:节点中心是识别癫痫发生区的可靠特征。通过多模式分析以及手术结果进行验证。总之,应用于癫痫患者的时变连通性分析可以从传播扩散中区分异常活动的产生者,并确定随时间变化的连通性模式。

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