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基于自适应傅里叶分解和机器学习的多模态睡眠分期评估

A multi-modal assessment of sleep stages using adaptive Fourier decomposition and machine learning.

机构信息

CMR Institute of Technology, Bangalore, India.

Netaji Subhas University of Technology, Delhi, India.

出版信息

Comput Biol Med. 2022 Sep;148:105877. doi: 10.1016/j.compbiomed.2022.105877. Epub 2022 Jul 14.

Abstract

Healthy sleep is essential for the rejuvenation of the body and helps in maintaining good health. Many people suffer from sleep disorders that are characterized by abnormal sleep patterns. Automated assessment of such disorders using biomedical signals has been an active subject of research. Electroencephalogram (EEG) is a popular diagnostic used in this regard. We consider a widely-used publicly available database and process the signals using the Fourier decomposition method (FDM) to obtain narrowband signal components. Statistical features extracted from these components are passed on to machine learning classifiers to identify different stages of sleep. A novel feature measuring the non-stationarity of the signal is also used to capture salient information. It is shown that classification results can be improved by using multi-channel EEG instead of single-channel EEG data. Simultaneous utilization of multiple modalities, such as Electromyogram (EMG), Electrooculogram (EOG) along with EEG data leads to further enhancement in the obtained results. The proposed method can be efficiently implemented in real-time using fast Fourier transform (FFT), and it provides better classification results than the other algorithms existing in the literature. It can assist in the development of low-cost sensor-based setups for continuous patient monitoring and feedback.

摘要

健康的睡眠对于身体的恢复至关重要,有助于保持身体健康。许多人患有睡眠障碍,其特征是睡眠模式异常。使用生物医学信号自动评估此类障碍一直是一个活跃的研究课题。脑电图(EEG)是一种常用的诊断方法。我们考虑使用广泛使用的公开可用数据库,并使用傅里叶分解方法(FDM)处理信号,以获得窄带信号分量。从这些分量中提取的统计特征被传递给机器学习分类器,以识别不同的睡眠阶段。还使用一种新的特征来测量信号的非平稳性,以捕获显著信息。结果表明,使用多通道 EEG 而不是单通道 EEG 数据可以提高分类结果。同时利用肌电图(EMG)、眼电图(EOG)和 EEG 数据等多种模态可以进一步提高获得的结果。该方法可以使用快速傅里叶变换(FFT)高效地实时实现,并且比文献中现有的其他算法提供更好的分类结果。它可以帮助开发基于低成本传感器的连续患者监测和反馈设置。

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