Wavelet-based EEG denoising for automatic sleep stage classification

E. Estrada, H. Nazeran, G. Sierra, F. Ebrahimi, S. Setarehdan
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引用次数: 52

Abstract

In automatic sleep stage classification, as in any other signal processing task involving the easily contaminated EEG signals, denoising constitutes a crucial pre-processing step that must be addressed before carrying out further analysis on the EEG signals. Discrete wavelet transform offers an effective solution for denoising nonstationary signals such as EEG due to its shrinkage property. In this paper, we explored the application of wavelet denoising method to EEG signals acquired during different sleep stages classified according to the RK rules, with the objective to identify suitable thresholding rules and threshold values. Preliminary results showed that the combination of soft thresholding rule applied to the Detailed wavelet coefficients with the Universal threshold value produced better performance measures such as a smaller Minimum Squared Error (MSE) and a larger signal-to-Noise Ratio (SNR). Similarly improved results were obtained for Stage 1, Stage 2, Stage 3, Stage 4 and REM stage EEG signals using this combination. Such thresholding rule and values are equally well applicable to denoising EEG epochs acquired from deep sleep stages.
基于小波的脑电信号去噪方法在睡眠阶段自动分类中的应用
在自动睡眠阶段分类中,与其他涉及易受污染的脑电信号的信号处理任务一样,去噪是对脑电信号进行进一步分析之前必须解决的关键预处理步骤。离散小波变换由于其收缩特性,为脑电图等非平稳信号的去噪提供了有效的解决方案。本文探讨了将小波去噪方法应用于根据RK规则分类的不同睡眠阶段的脑电信号,以确定合适的阈值规则和阈值。初步结果表明,将应用于detail小波系数的软阈值规则与通用阈值相结合,可以获得更小的最小平方误差(MSE)和更大的信噪比(SNR)等性能指标。使用这种组合对1、2、3、4和REM阶段的脑电图信号也获得了类似的改善结果。这种阈值规则和值同样适用于深度睡眠阶段的脑电信号去噪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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