Ahmadi Negar, Pei Yulong, Carrette Evelien, Aldenkamp Albert P, Pechenizkiy Mykola
Department of Mathematics and Computer Science, Eindhoven University of Technology, TU/e, P.O.Box: 513, 5600MB, Eindhoven, NL, The Netherlands.
Neurology Department, Ghent University Hospital, Ghent, Belgium.
Brain Inform. 2020 May 29;7(1):6. doi: 10.1186/s40708-020-00107-z.
Epilepsy and psychogenic non-epileptic seizures (PNES) often show over-lap in symptoms, especially at an early disease stage. During a PNES, the electrical activity of the brain remains normal but in case of an epileptic seizure the brain will show epileptiform discharges on the electroencephalogram (EEG). In many cases an accurate diagnosis can only be achieved after a long-term video monitoring combined with EEG recording which is quite expensive and time-consuming. In this paper using short-term EEG data, the classification of epilepsy and PNES subjects is analyzed based on signal, functional network and EEG microstate features. Our results showed that the beta-band is the most useful EEG frequency sub-band as it performs best for classifying subjects. Also the results depicted that when the coverage feature of the EEG microstate analysis is calculated in beta-band, the classification shows fairly high accuracy and precision. Hence, the beta-band and the coverage are the most important features for classification of epilepsy and PNES patients.
癫痫和精神性非癫痫发作(PNES)在症状上常常存在重叠,尤其是在疾病早期阶段。在PNES发作期间,大脑的电活动保持正常,但在癫痫发作时,脑电图(EEG)上大脑会显示癫痫样放电。在许多情况下,只有经过长期视频监测并结合EEG记录才能做出准确诊断,而这相当昂贵且耗时。本文利用短期EEG数据,基于信号、功能网络和EEG微状态特征对癫痫和PNES受试者进行分类分析。我们的结果表明,β波段是最有用的EEG频率子波段,因为它在对受试者进行分类时表现最佳。结果还表明,当在β波段计算EEG微状态分析的覆盖特征时,分类显示出相当高的准确性和精确性。因此,β波段和覆盖特征是癫痫和PNES患者分类的最重要特征。