Zhu Hangyu, Fu Cong, Shu Feng, Yu Huan, Chen Chen, Chen Wei
School of Information Science and Technology, Fudan University, Shanghai 200433, China.
Huashan Hospital, Shanghai Medical College, Fudan University, Shanghai 200040, China.
Bioengineering (Basel). 2023 May 10;10(5):573. doi: 10.3390/bioengineering10050573.
The influence of the coupled electroencephalography (EEG) signal in electrooculography (EOG) on EOG-based automatic sleep staging has been ignored. Since the EOG and prefrontal EEG are collected at close range, it is not clear whether EEG couples in EOG or not, and whether or not the EOG signal can achieve good sleep staging results due to its intrinsic characteristics. In this paper, the effect of a coupled EEG signal in an EOG signal on automatic sleep staging is explored. The blind source separation algorithm was used to extract a clean prefrontal EEG signal. Then the raw EOG signal and clean prefrontal EEG signal were processed to obtain EOG signals coupled with different EEG signal contents. Afterwards, the coupled EOG signals were fed into a hierarchical neural network, including a convolutional neural network and recurrent neural network for automatic sleep staging. Finally, an exploration was performed using two public datasets and one clinical dataset. The results showed that using a coupled EOG signal could achieve an accuracy of 80.4%, 81.1%, and 78.9% for the three datasets, slightly better than the accuracy of sleep staging using the EOG signal without coupled EEG. Thus, an appropriate content of coupled EEG signal in an EOG signal improved the sleep staging results. This paper provides an experimental basis for sleep staging with EOG signals.
眼电图(EOG)中耦合的脑电图(EEG)信号对基于EOG的自动睡眠分期的影响一直被忽视。由于EOG和前额叶脑电图是在近距离采集的,尚不清楚EEG是否会耦合到EOG中,以及EOG信号因其固有特性能否实现良好的睡眠分期结果。本文探讨了EOG信号中耦合的EEG信号对自动睡眠分期的影响。使用盲源分离算法提取纯净的前额叶EEG信号。然后对原始EOG信号和纯净的前额叶EEG信号进行处理,以获得与不同EEG信号内容耦合的EOG信号。之后,将耦合的EOG信号输入到一个分层神经网络中,该网络包括一个卷积神经网络和一个循环神经网络,用于自动睡眠分期。最后,使用两个公共数据集和一个临床数据集进行了探究。结果表明,对于这三个数据集,使用耦合的EOG信号可分别达到80.4%、81.1%和78.9%的准确率,略高于使用未耦合EEG的EOG信号进行睡眠分期的准确率。因此,EOG信号中适当的耦合EEG信号内容改善了睡眠分期结果。本文为利用EOG信号进行睡眠分期提供了实验依据。