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Automatic detection of PTZ-induced seizures based on functional brain connectivity network in rats

机译:基于函数脑连接网络的大鼠致态诱导癫痫发作的自动检测

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Functional brain connectivity (FBC) network has been used for characterizing the dynamics of seizure evolution. In this paper, FBC networks based on correlation coefficient (COR), cross-correlation (xCOR), coherence (COH), phase slope index (PSI), phase locking value (PLV), phase lag index (PLI), mutual information (MI), transfer entropy (TE), Granger-causality index (GCI), directed transfer function (DTF), and partial directed coherence (PDC) were constructed. Graph theoretic measures, including transitivity, modularity, characteristic path length, radius, diameter, and global efficiency were calculated for each FBC network, and used as the feature vector for classifying ECoG signals corresponding to seizure and nonseizure. The results show that an average accuracy of 95.3% was obtained using the combined features from all FBC networks.
机译:功能性大脑连接(FBC)网络已被用于表征癫痫发作演化的动态。在本文中,基于相关系数(COR),互相关(XCOR),相干(COH),相位斜率(PSI),阶段锁定值(PLV),相位滞后指数(PLI),相互信息()的FBC网络,相互信息( MI),转移熵(TE),GRANGER-因果指数(GCI),定向传递函数(DTF)和部分定向的一致性(PDC)。为每个FBC网络计算图形理论措施,包括传递率,模块化,特征路径长度,半径,直径和全局效率,并用作分类与癫痫发作和无暗提析相对应的ECOG信号的特征向量。结果表明,使用来自所有FBC网络的组合特征获得了95.3 %的平均精度。

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