Evaluation of a single-channel EEG-based sleep staging algorithm

Sleep staging is the basis of sleep assessment and plays a crucial role in the early diagnosis and intervention of sleep disorders. Manual sleep staging by a specialist is time-consuming and is influenced by subjective factors. Moreover, some automatic sleep staging algorithms are complex and inaccu...

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Main Authors: Zhao, Shanguang, Long, Fangfang, Wei, Xin, Ni, Xiaoli, Wang, Hui, Wei, Bokun
Format: Article
Published: MDPI 2022
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Online Access:http://eprints.um.edu.my/33336/
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Institution: Universiti Malaya
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spelling my.um.eprints.333362022-08-08T08:06:20Z http://eprints.um.edu.my/33336/ Evaluation of a single-channel EEG-based sleep staging algorithm Zhao, Shanguang Long, Fangfang Wei, Xin Ni, Xiaoli Wang, Hui Wei, Bokun GE Environmental Sciences Sleep staging is the basis of sleep assessment and plays a crucial role in the early diagnosis and intervention of sleep disorders. Manual sleep staging by a specialist is time-consuming and is influenced by subjective factors. Moreover, some automatic sleep staging algorithms are complex and inaccurate. The paper proposes a single-channel EEG-based sleep staging method that provides reliable technical support for diagnosing sleep problems. In this study, 59 features were extracted from three aspects: time domain, frequency domain, and nonlinear indexes based on single-channel EEG data. Support vector machine, neural network, decision tree, and random forest classifier were used to classify sleep stages automatically. The results reveal that the random forest classifier has the best sleep staging performance among the four algorithms. The recognition rate of the Wake phase was the highest, at 92.13%, and that of the N1 phase was the lowest, at 73.46%, with an average accuracy of 83.61%. The embedded method was adopted for feature filtering. The results of sleep staging of the 11-dimensional features after filtering show that the random forest model achieved 83.51% staging accuracy under the condition of reduced feature dimensions, and the coincidence rate with the use of all features for sleep staging was 94.85%. Our study confirms the robustness of the random forest model in sleep staging, which also represents a high classification accuracy with appropriate classifier algorithms, even using single-channel EEG data. This study provides a new direction for the portability of clinical EEG monitoring. MDPI 2022-03 Article PeerReviewed Zhao, Shanguang and Long, Fangfang and Wei, Xin and Ni, Xiaoli and Wang, Hui and Wei, Bokun (2022) Evaluation of a single-channel EEG-based sleep staging algorithm. International Journal of Environmental Research and Public Health, 19 (5). ISSN 1660-4601, DOI https://doi.org/10.3390/ijerph19052845 <https://doi.org/10.3390/ijerph19052845>. 10.3390/ijerph19052845
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic GE Environmental Sciences
spellingShingle GE Environmental Sciences
Zhao, Shanguang
Long, Fangfang
Wei, Xin
Ni, Xiaoli
Wang, Hui
Wei, Bokun
Evaluation of a single-channel EEG-based sleep staging algorithm
description Sleep staging is the basis of sleep assessment and plays a crucial role in the early diagnosis and intervention of sleep disorders. Manual sleep staging by a specialist is time-consuming and is influenced by subjective factors. Moreover, some automatic sleep staging algorithms are complex and inaccurate. The paper proposes a single-channel EEG-based sleep staging method that provides reliable technical support for diagnosing sleep problems. In this study, 59 features were extracted from three aspects: time domain, frequency domain, and nonlinear indexes based on single-channel EEG data. Support vector machine, neural network, decision tree, and random forest classifier were used to classify sleep stages automatically. The results reveal that the random forest classifier has the best sleep staging performance among the four algorithms. The recognition rate of the Wake phase was the highest, at 92.13%, and that of the N1 phase was the lowest, at 73.46%, with an average accuracy of 83.61%. The embedded method was adopted for feature filtering. The results of sleep staging of the 11-dimensional features after filtering show that the random forest model achieved 83.51% staging accuracy under the condition of reduced feature dimensions, and the coincidence rate with the use of all features for sleep staging was 94.85%. Our study confirms the robustness of the random forest model in sleep staging, which also represents a high classification accuracy with appropriate classifier algorithms, even using single-channel EEG data. This study provides a new direction for the portability of clinical EEG monitoring.
format Article
author Zhao, Shanguang
Long, Fangfang
Wei, Xin
Ni, Xiaoli
Wang, Hui
Wei, Bokun
author_facet Zhao, Shanguang
Long, Fangfang
Wei, Xin
Ni, Xiaoli
Wang, Hui
Wei, Bokun
author_sort Zhao, Shanguang
title Evaluation of a single-channel EEG-based sleep staging algorithm
title_short Evaluation of a single-channel EEG-based sleep staging algorithm
title_full Evaluation of a single-channel EEG-based sleep staging algorithm
title_fullStr Evaluation of a single-channel EEG-based sleep staging algorithm
title_full_unstemmed Evaluation of a single-channel EEG-based sleep staging algorithm
title_sort evaluation of a single-channel eeg-based sleep staging algorithm
publisher MDPI
publishDate 2022
url http://eprints.um.edu.my/33336/
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