Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks
Sleep is an integral part of human life which provides the body with much-needed rest which facilitates recovery and promotes health. Sleep disorders, however, lead to a reduced quality of sleep and as a result, affect the standard of human life. It is important to classify sleep stages in order to...
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my.um.eprints.372522023-03-08T08:28:21Z http://eprints.um.edu.my/37252/ Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks Sharma, Manish Patel, Sohamkumar Choudhary, Siddhant Acharya, U. Rajendra R Medicine (General) Sleep is an integral part of human life which provides the body with much-needed rest which facilitates recovery and promotes health. Sleep disorders, however, lead to a reduced quality of sleep and as a result, affect the standard of human life. It is important to classify sleep stages in order to detect sleep disorders. Electroencephalogram (EEG) signals are obtained from patients under observation. But, classifying these EEG signals into various sleep stages is an arduous task. It becomes more difficult when one tries to classify EEG signals visually. Even sleep specialists struggle to classify the EEG signals into different sleep stages by visual inspection. Several approaches have been adopted by scientists across the world to mitigate these errors by using EEG and polysomnogram signals. In this paper, an automated method has been proposed for scoring various sleep stages employing EEG signals. We have employed a two-band energy-localized filter in the time-frequency domain, which decomposed six sub-bands using five-level wavelet decomposition. Subsequently, we compute discriminatory features namely fuzzy entropy and log energy from the decomposed coefficients. The extracted features are fed to various supervised machine learning classifiers. Our proposed approach yielded an accuracy of 91.5% and 88.5% for six-class classification task using small and large datasets, respectively. Springer Heidelberg 2020-04 Article PeerReviewed Sharma, Manish and Patel, Sohamkumar and Choudhary, Siddhant and Acharya, U. Rajendra (2020) Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks. Arabian Journal for Science and Engineering, 45 (4). pp. 2531-2544. ISSN 2193-567X, DOI https://doi.org/10.1007/s13369-019-04197-8 <https://doi.org/10.1007/s13369-019-04197-8>. 10.1007/s13369-019-04197-8 |
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R Medicine (General) Sharma, Manish Patel, Sohamkumar Choudhary, Siddhant Acharya, U. Rajendra Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
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Sleep is an integral part of human life which provides the body with much-needed rest which facilitates recovery and promotes health. Sleep disorders, however, lead to a reduced quality of sleep and as a result, affect the standard of human life. It is important to classify sleep stages in order to detect sleep disorders. Electroencephalogram (EEG) signals are obtained from patients under observation. But, classifying these EEG signals into various sleep stages is an arduous task. It becomes more difficult when one tries to classify EEG signals visually. Even sleep specialists struggle to classify the EEG signals into different sleep stages by visual inspection. Several approaches have been adopted by scientists across the world to mitigate these errors by using EEG and polysomnogram signals. In this paper, an automated method has been proposed for scoring various sleep stages employing EEG signals. We have employed a two-band energy-localized filter in the time-frequency domain, which decomposed six sub-bands using five-level wavelet decomposition. Subsequently, we compute discriminatory features namely fuzzy entropy and log energy from the decomposed coefficients. The extracted features are fed to various supervised machine learning classifiers. Our proposed approach yielded an accuracy of 91.5% and 88.5% for six-class classification task using small and large datasets, respectively. |
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Article |
author |
Sharma, Manish Patel, Sohamkumar Choudhary, Siddhant Acharya, U. Rajendra |
author_facet |
Sharma, Manish Patel, Sohamkumar Choudhary, Siddhant Acharya, U. Rajendra |
author_sort |
Sharma, Manish |
title |
Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
title_short |
Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
title_full |
Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
title_fullStr |
Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
title_full_unstemmed |
Automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
title_sort |
automated detection of sleep stages using energy-localized orthogonal wavelet filter banks |
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Springer Heidelberg |
publishDate |
2020 |
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http://eprints.um.edu.my/37252/ |
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1761616814375174144 |
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13.214268 |