School of Life Science and Technology, Beijing Institute of Technology, Beijing, China.
Clin EEG Neurosci. 2013 Apr;44(2):150-6. doi: 10.1177/1550059412464449. Epub 2013 Mar 17.
A new nonlinear approach is presented for high-frequency electrocorticography (ECoG)-based diagnosis of epilepsy. The ECoG data from 3 patients with epilepsy are analyzed in this study. A recently developed algorithm in graph theory, visibility graph (VG), is applied in this research. The approach is based on the key discovery that high-frequency oscillation takes place during epileptic seizure, making it a marker of epilepsy. Therefore, the nonlinear property of the high-frequency signal may be more noticeable. Hence, a complexity measure, called graph index complexity (GIC), is computed using the VG of the patients' high-frequency ECoG subband. After comparison and statistical analysis, the nonlinear feature is proved to be effective in detection and location of the epilepsy. Two different traditional complexities, sample entropy and Lempel-Ziv, were also calculated to make a comparison and prove that GIC provides better identification.
提出了一种新的非线性方法,用于基于高频脑电描记术(ECoG)的癫痫诊断。本研究分析了 3 名癫痫患者的 ECoG 数据。在这项研究中应用了图论中最近开发的算法,即可视性图(VG)。该方法基于一个关键发现,即在癫痫发作期间会发生高频振荡,使其成为癫痫的标志物。因此,高频信号的非线性特性可能更加明显。因此,使用患者高频 ECoG 子带的 VG 计算了一种称为图指数复杂度(GIC)的复杂度度量。经过比较和统计分析,证明了该非线性特征在癫痫的检测和定位中是有效的。还计算了两种不同的传统复杂度,样本熵和 Lempel-Ziv,以进行比较并证明 GIC 提供了更好的识别。