IEEE Trans Neural Syst Rehabil Eng. 2022;30:1452-1463. doi: 10.1109/TNSRE.2022.3173994. Epub 2022 Jun 2.
Elimination of intra-artifacts in EEG has been overlooked in most of the existing sleep staging systems, especially in deep learning-based approaches. Whether intra-artifacts, originated from the eye movement, chin muscle firing, or heart beating, etc., in EEG signals would lead to a positive or a negative masking effect on deep learning-based sleep staging systems was investigated in this paper. We systematically analyzed several traditional pre-processing methods involving fast Independent Component Analysis (FastICA), Information Maximization (Infomax), and Second-order Blind Source Separation (SOBI). On top of these methods, a SOBI-WT method based on the joint use of the SOBI and Wavelet Transform (WT) is proposed. It offered an effective solution for suppressing artifact components while retaining residual informative data. To provide a comprehensive comparative analysis, these pre-processing methods were applied to eliminate the intra-artifacts and the processed signals were fed to two ready-to-use deep learning models, namely two-step hierarchical neural network (THNN) and SimpleSleepNet for automatic sleep staging. The evaluation was performed on two widely used public datasets, Montreal Archive of Sleep Studies (MASS) and Sleep-EDF Expanded, and a clinical dataset that was collected in Huashan Hospital of Fudan University, Shanghai, China (HSFU). The proposed SOBI-WT method increased the accuracy from 79.0% to 81.3% on MASS, 83.3% to 85.7% on Sleep-EDF Expanded, and 75.5% to 77.1% on HSFU compared with the raw EEG signal, respectively. Experimental results demonstrate that the intra-artifacts bring out a masking negative impact on the deep learning-based sleep staging systems and the proposed SOBI-WT method has the best performance in diminishing this negative impact compared with other artifact elimination methods.
在大多数现有的睡眠分期系统中,特别是在基于深度学习的方法中,都忽略了脑电图中的内在伪影的消除。本文研究了脑电图信号中的内在伪影(源自眼球运动、下巴肌肉活动或心跳等)是否会对基于深度学习的睡眠分期系统产生正或负的掩蔽效应。我们系统地分析了几种传统的预处理方法,包括快速独立成分分析(FastICA)、信息最大化(Infomax)和二阶盲源分离(SOBI)。在这些方法的基础上,提出了一种基于 SOBI 和小波变换(WT)联合使用的 SOBI-WT 方法。该方法为抑制伪影成分同时保留剩余信息数据提供了有效解决方案。为了提供全面的比较分析,这些预处理方法被应用于消除内在伪影,然后将处理后的信号输入到两个现成的深度学习模型,即两步分层神经网络(THNN)和 SimpleSleepNet,用于自动睡眠分期。评估在两个广泛使用的公共数据集 Montreal Archive of Sleep Studies (MASS) 和 Sleep-EDF Expanded,以及中国上海复旦大学华山医院采集的一个临床数据集(HSFU)上进行。与原始 EEG 信号相比,所提出的 SOBI-WT 方法分别将 MASS 的准确性从 79.0%提高到 81.3%,将 Sleep-EDF Expanded 的准确性从 83.3%提高到 85.7%,将 HSFU 的准确性从 75.5%提高到 77.1%。实验结果表明,内在伪影对基于深度学习的睡眠分期系统产生了掩蔽负向影响,与其他伪影消除方法相比,所提出的 SOBI-WT 方法在减少这种负向影响方面表现最佳。