4.5 Article

A novel approach to automatic sleep stage classification using forehead electrophysiological signals

期刊

HELIYON
卷 8, 期 12, 页码 -

出版社

CELL PRESS
DOI: 10.1016/j.heliyon.2022.e12136

关键词

Sleep stages; Light gradient boosting machine (LGB); Forehead electrophysiological signal; Electrooculogram (EOG); Discrete wavelet transform (DWT)

资金

  1. National Key Research & Development Program of China [2022YFF1202400]
  2. National Natural Science Foundation of China [62276181, 62006171]
  3. Tianjin Science and Technology Project of China [20JCYBJC00930]

向作者/读者索取更多资源

This paper proposes an automatic sleep staging system based on forehead electrophysiological signals, which extracts features and uses machine learning algorithms to classify four sleep stages. In the validation experiments, the proposed method achieved high classification accuracy and kappa coefficient. The proposed method has higher portability, which can facilitate the application of long-term monitoring of sleep quality in the future.
Background: Sleep stage scoring is very important for the effective diagnosis and intervention of sleep disorders. However, the current automatic sleep staging methods generally have the problems of poor model generalization ability and non-portable acquisition equipment. Method: In this paper, we propose a novel automatic sleep scoring system based on forehead electrophysiological signals that is more effective and convenient than other systems. We extract 3 channel signals from the forehead, named forehead electroencephalogram 1 (Fh1), forehead electroencephalogram 2 (Fh2), and forehead center electrooculogram (Fhz). Spectral features, statistical features, and entropy features are extracted using the discrete wavelet transform (DWT) method. Light gradient boosting machine (LGB), random forest (RF), and support vector machine (SVM) are employed to classify four stages: awake, light sleep (LS), deep sleep (DS), and rapid eye movement (REM). Result: The performance of the proposed method is validated using databases of the Sleep-EDFX and our Own-data, which include polysomnograms (PSGs) and forehead signals of 28 subjects. The overall classification accuracy of using the combination of Fh1, Fh2, and Fhz can reach up to 90.25% accuracy with a kappa coefficient of 0.857. Conclusions: The proposed method could provide state-of-art multichannel sleep stage scoring performance with higher portability. This will facilitate the application of long-term monitoring of sleep quality in the future.

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