Feature Extraction and Classification of EEG Signals for Seizure Detection

Apu Nandy, Mohammad Ashik Alahe, S. M. Nasim Uddin, S. Alam, Adullah-Al Nahid, M. Awal
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引用次数: 30

Abstract

Epileptic seizure is a neurological disorder characterized by abnormal synchronous discharge of the neuronal activities in the brain structures. These abnormal electrical activities can be recorded via multi-channel electroencephalography (EEG) signals placed on the scalp of the brain. Usually, these signals, recorded from this EEG device, are interpreted by the neurologist which require their availability and it is very time consuming especially for long duration signals. This study presents a fully automatic system for the detection of seizure from non-seizure signals. Firstly, it pre-processes the signal to remove noise and artefacts from the raw-EEG signals and then extracts features. Features are extracted from time-domain, spectral domain, wavelet domain. In addition, connectivity and entropy based feature have also been extracted. After that, prominent features have been selected from this large feature set by a multi-objective evolutionary algorithm and finally, Support Vector Machine (SVM) classifier has been used for classification. A Bayesian optimization algorithm has been used to optimize the hyper-parameters of SVM. Linear Discriminant Analysis (LDA) and Quadratic Linear Discriminant Analysis (QLDA) have also been used for comparison. The proposed system is tested on a publicly available CHB-MIT database and results show the significance of the proposed system. The distinguished accuracy of the classifier is 76.41%, 80.79% and 97.05% in LDA, QLDA and SVM, respectively.
用于癫痫检测的脑电信号特征提取与分类
癫痫发作是一种以大脑结构中神经元活动异常同步放电为特征的神经系统疾病。这些异常的电活动可以通过放置在大脑头皮上的多通道脑电图(EEG)信号来记录。通常,从EEG设备记录的这些信号需要由神经科医生解释,这需要它们的可用性,并且非常耗时,特别是对于长时间的信号。本研究提出了一种全自动系统,用于从非癫痫信号中检测癫痫。首先对原始脑电信号进行预处理,去除噪声和伪影,提取特征;从时域、谱域、小波域提取特征。此外,还提取了基于连通性和熵的特征。然后,通过多目标进化算法从这个庞大的特征集中筛选出突出的特征,最后使用支持向量机(SVM)分类器进行分类。采用贝叶斯优化算法对支持向量机的超参数进行优化。线性判别分析(LDA)和二次线性判别分析(QLDA)也被用于比较。该系统在一个公开可用的CHB-MIT数据库上进行了测试,结果表明了该系统的重要性。LDA、QLDA和SVM分类器的识别准确率分别为76.41%、80.79%和97.05%。
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