Benzaid Amel, Djemili Rafik, Arbateni Khaled
LRES Lab, Universite 20 Aout 1955 Skikda Faculte de Technologie, Skikda, Algeria.
Comput Methods Biomech Biomed Engin. 2024 May 27:1-17. doi: 10.1080/10255842.2024.2356634.
Epilepsy is a brain disorder that causes patients to suffer from convulsions, which affects their behavior and way of life. Epilepsy can be detected with electroencephalograms (EEGs), which record brain neural activity. Traditional approaches for detecting epileptic seizures from an EEG signal are time-consuming and annoying. To supersede these traditional methods, a myriad of automated seizure detection frameworks based on machine learning techniques have recently been developed. Feature extraction and classification are the two essential phases for seizure detection. The classifier assigns the proper class label after feature extraction lowers the input pattern space while maintaining useful features. This paper proposes a new feature extraction method based on calculating nonlinear features from the most relevant EEG frequency bands. The EEG signal is first decomposed into smaller time segments from which a vector of nonlinear features is computed and supplied to machine learning (ML) and deep learning (DL) classifiers. Experiments on the Bonn dataset reveals an accuracy of 99.7% reached in classifying normal and ictal EEG signals; and an accuracy of 98.8% in the discrimination of ictal and interictal EEG signals. Furthermore, a performance of 100% is achieved on the Hauz Khas dataset. The classification results of the proposed approach were compared to those from published state of the art techniques. Our results are equivalent to or better than some recent studies appeared in the literature.
癫痫是一种脑部疾病,会导致患者抽搐,影响他们的行为和生活方式。癫痫可以通过脑电图(EEG)检测出来,脑电图记录大脑神经活动。从EEG信号中检测癫痫发作的传统方法既耗时又麻烦。为了取代这些传统方法,最近已经开发了许多基于机器学习技术的自动癫痫发作检测框架。特征提取和分类是癫痫发作检测的两个基本阶段。在特征提取降低输入模式空间同时保留有用特征之后,分类器会分配适当类别标签。本文提出了一种基于从最相关的EEG频段计算非线性特征的新特征提取方法。EEG信号首先被分解成较小的时间段,从中计算出非线性特征向量并提供给机器学习(ML) 和深度学习(DL)分类器。在波恩数据集上所做的实验表明,对正常和发作期EEG信号进行分类达到了99.7%的准确率;在区分发作期和发作间期EEG信号方面的准确率为98.8%。此外,在豪兹卡斯数据集上实现了100%的性能。将所提出方法的分类结果与已发表的最新技术的结果进行了比较。我们的结果等同于或优于文献中最近出现的一些研究。