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利用脑电图和心电图对癫痫性发作与精神性非癫痫性发作进行分类

Classification of Epileptic and Psychogenic Non-Epileptic Seizures Using Electroencephalography and Electrocardiography.

作者信息

Xiong Wenjuan, Nurse Ewan S, Lambert Elisabeth, Cook Mark J, Kameneva Tatiana

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2023;31:2831-2838. doi: 10.1109/TNSRE.2023.3288138. Epub 2023 Jul 6.

DOI:10.1109/TNSRE.2023.3288138
PMID:37342948
Abstract

Patients with psychogenic non-epileptic seizures (PNES) may exhibit similar clinical features to patients with epileptic seizures (ES). Misdiagnosis of PNES and ES can lead to inappropriate treatment and significant morbidity. This study investigates the use of machine learning techniques for classification of PNES and ES based on electroencephalography (EEG) and electrocardiography (ECG) data. Video-EEG-ECG of 150 ES events from 16 patients and 96 PNES from 10 patients were analysed. Four preictal periods (time before event onset) in EEG and ECG data were selected for each PNES and ES event (60-45 min, 45-30 min, 30-15 min, 15-0 min). Time-domain features were extracted from each preictal data segment in 17 EEG channels and 1 ECG channel. The classification performance using k-nearest neighbour, decision tree, random forest, naive Bayes, and support vector machine classifiers were evaluated. The results showed the highest classification accuracy was 87.83% using the random forest on 15-0 min preictal period of EEG and ECG data. The performance was significantly higher using 15-0 min preictal period data than 30-15 min, 45-30 min, and 60-45 min preictal periods ( [Formula: see text]). The classification accuracy was improved from 86.37% to 87.83% by combining ECG data with EEG data ( [Formula: see text]). The study provided an automated classification algorithm for PNES and ES events using machine learning techniques on preictal EEG and ECG data.

摘要

精神性非癫痫性发作(PNES)患者可能表现出与癫痫性发作(ES)患者相似的临床特征。PNES和ES的误诊会导致不适当的治疗并带来严重的发病率。本研究调查了基于脑电图(EEG)和心电图(ECG)数据,使用机器学习技术对PNES和ES进行分类的情况。分析了来自16例患者的150次ES事件以及来自10例患者的96次PNES事件的视频脑电图 - 心电图。为每个PNES和ES事件在EEG和ECG数据中选择了四个发作前期(事件发作前的时间)(60 - 45分钟、45 - 30分钟、30 - 15分钟、15 - 0分钟)。从17个EEG通道和1个ECG通道的每个发作前期数据段中提取时域特征。评估了使用k近邻、决策树、随机森林、朴素贝叶斯和支持向量机分类器的分类性能。结果表明,在EEG和ECG数据的15 - 0分钟发作前期使用随机森林时,最高分类准确率为87.83%。使用15 - 0分钟发作前期数据的性能显著高于30 - 15分钟、45 - 30分钟和60 - 45分钟发作前期([公式:见原文])。通过将ECG数据与EEG数据相结合,分类准确率从86.37%提高到了87.83%([公式:见原文])。该研究提供了一种基于发作前期EEG和ECG数据,使用机器学习技术对PNES和ES事件进行自动分类的算法。

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