Optimal IMF Selection of EMD for Sleep Disorder Diagnosis using EEG Signals

Md. Rashedul Islam, M. Rahim, Hafeza Akter, Raihan Kabir, Jungpil Shin
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引用次数: 13

Abstract

Sleep disorders has a vital effect on mental depression and many other diseases of human body. Diagnosing the sleep disorder in an early curable stage may help to provide better treatment and save the life. The EEG (Electroencephalogram) signal is one of the most uses bio signal for capturing brain activities to detect and diagnosis the sleep disorders. Empirical mode decomposition (EMD) is an efficient time-frequency data analysis technique for diagnosing disease by analyzing EEG signal. However, it is a challenging issue to select the optimal intrinsic mode functions (IMFs) of Empirical mode decomposition (EMD) for extracting discriminant properties of EEG signals to diagnosis the sleep disorder. From this point of view, this paper presents a model to select optimal IMF of EMD for diagnosing the sleep disorder using EEG brain signal. In this proposed model, EMD is applied to decompose and analyze EEG signal for extracting biomarker/feature of sleep disorders. During the EMD decomposition process, different levels of IMF are extracted and features, i.e., Shannon Entropy, Spectral Entropy, Standard deviation, Skewness and Kurtosis are calculated from those IMFs for detecting the sleep disorders. In identification process, the multiclass support vector machine (MC-SVM) classification algorithm is used and sleep disorders are classified based on trained knowledge. Finally, the performance of proposed model is evaluated for different IMFs of EMD and find the optimal IMF for sleep disorder diagnosis. For evaluating the proposed model, a benchmark dataset including 4 types of data such as Apnea, REM, PLM and healthy subjects are used in experiment. According to the experimental result, the proposed model achieves the optimal classification performance for IMF 8, i.e., 93.24% average classification accuracy.
基于EEG信号的EMD睡眠障碍诊断的最优IMF选择
睡眠障碍对精神抑郁和其他许多人体疾病有着至关重要的影响。在早期可治愈阶段诊断睡眠障碍可能有助于提供更好的治疗和挽救生命。EEG (Electroencephalogram)信号是利用生物信号捕捉大脑活动来检测和诊断睡眠障碍的方法之一。经验模态分解(EMD)是一种通过分析脑电图信号来诊断疾病的有效时频数据分析技术。然而,如何选择经验模态分解(EMD)的最优本征模态函数(IMFs)来提取脑电信号的判别特征以诊断睡眠障碍是一个具有挑战性的问题。从这个角度出发,本文提出了一种基于EMD的最优IMF选择模型,用于脑电图脑信号诊断睡眠障碍。在该模型中,采用EMD对脑电信号进行分解和分析,提取睡眠障碍的生物标志物/特征。在EMD分解过程中,提取不同水平的IMF,并从这些IMF中计算Shannon熵、谱熵、标准差、Skewness和Kurtosis等特征,用于检测睡眠障碍。在识别过程中,采用多类支持向量机(MC-SVM)分类算法,根据训练好的知识对睡眠障碍进行分类。最后,对所提模型的性能进行了不同EMD的IMFs的评估,并找到了用于睡眠障碍诊断的最优IMF。为了评估所提出的模型,我们使用了包括Apnea、REM、PLM和健康被试4类数据的基准数据集进行实验。实验结果表明,该模型在IMF 8中达到了最优的分类性能,平均分类准确率为93.24%。
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