Gao Xiang, Yang Yufang, Zhang Fang, Zhou Fan, Zhu Junming, Sun Jie, Xu Kedi, Chen Yaowu
Institute of Advanced Digital Technology and Instrument, Zhejiang University, Hangzhou 310027, China.
Binjiang Institude of Zhejiang University, Hangzhou 310027, China.
Brain Sci. 2022 Dec 27;13(1):52. doi: 10.3390/brainsci13010052.
Automatic detection of epileptic seizures is important in epilepsy control and treatment, and specific feature extraction assists in accurate detection. We developed a feature extraction method for seizure detection based on multi-site synchronous changes and an edge detection algorithm. We investigated five chronic temporal lobe epilepsy rats with 8- and 12-channel detection sites in the hippocampus and limbic system. Multi-site synchronous changes were selected as a specific feature and implemented as a seizure detection method. For preprocessing, we used magnitude-squared coherence maps and Canny edge detection algorithm to find the frequency band with the most significant change in synchronization and the important channel pairs. In detection, we used the maximal cross-correlation coefficient as an indicator of synchronization and the correlation coefficient curves' average value and standard deviation as two detection features. The method achieved high performance, with an average 96.60% detection rate, 2.63/h false alarm rate, and 1.25 s detection delay. The experimental results show that synchronization is an appropriate feature for seizure detection. The magnitude-squared coherence map can assist in selecting a specific frequency band and channel pairs to enhance the detection result. We found that individuals have a specific frequency band that reflects the most significant synchronization changes, and our method can individually adjust parameters and has good detection performance.
癫痫发作的自动检测在癫痫控制和治疗中很重要,特定特征提取有助于准确检测。我们基于多部位同步变化和边缘检测算法开发了一种用于癫痫发作检测的特征提取方法。我们研究了五只慢性颞叶癫痫大鼠,在海马体和边缘系统设置了8通道和12通道检测位点。选择多部位同步变化作为特定特征并将其实现为一种癫痫发作检测方法。在预处理中,我们使用幅度平方相干图和Canny边缘检测算法来找到同步变化最显著的频段和重要的通道对。在检测中,我们使用最大互相关系数作为同步指标,并将相关系数曲线的平均值和标准差作为两个检测特征。该方法具有高性能,平均检测率为96.60%,误报率为2.63次/小时,检测延迟为1.25秒。实验结果表明,同步是癫痫发作检测的合适特征。幅度平方相干图有助于选择特定频段和通道对以增强检测结果。我们发现个体有反映最显著同步变化的特定频段,并且我们的方法可以单独调整参数并具有良好的检测性能。