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Temporal evolution analysis of functional connectivity in epilepsy based on weighted complex networks

机译:基于加权复杂网络的癫痫功能连通性的时空演化分析

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It's proposed that weights of links play critical role in complex system. In this study, we adopted nine network characteristics to verify their performance in the brain of temporal lobe epilepsy (TLE). Weighted networks were derived from phase locking values on multichannel intracranial electroencephalography (EEG) recordings when the patient is undergoing seizure attack. It's illustrated that network efficiency, vertex strength, transitivity and characteristic path were sensitive to the occurrence of seizures compared to other measurements. What's more, networks derived from gamma band neural oscillations performs more remarkable than other sub band signals while networks in delta band manifests trivial alterations during seizure process. Further research would focus on investigating characteristic network features in weighted networks and frequency dependency in epileptic brain of TLE.
机译:建议在复杂系统中链接权重起关键作用。在这项研究中,我们采用了九种网络特征来验证其在颞叶癫痫(TLE)大脑中的表现。当患者发生癫痫发作时,加权网络是根据多通道颅内脑电图(EEG)记录上的锁相值得出的。说明了与其他测量相比,网络效率,顶点强度,传递性和特征路径对癫痫发作的发生较为敏感。更重要的是,从伽玛带神经振荡得到的网络比其他子带信号表现更出色,而在三角带中的网络在癫痫发作过程中表现出微不足道的变化。进一步的研究将集中于研究TLE网络中加权网络的特征网络特征和频率依赖性。

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