Classification of healthy subjects and insomniac patients based on automated sleep onset detection
This work aims to investigate new indexes quantitatively differentiate sleep insomnia patients from healthy subjects, in the context of sleep onset fluctuations. Our study included the use of existing PSG dataset, of 20 healthy subjects and 20 insomniac subjects. The differences between normal sleep...
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my.utm.621712017-08-06T03:05:34Z http://eprints.utm.my/id/eprint/62171/ Classification of healthy subjects and insomniac patients based on automated sleep onset detection Dissanayaka, Chamila Abdullah, Haslaile Ahmed, Beena Penzel, Thomas Cvetkovic, Dean TK Electrical engineering. Electronics Nuclear engineering This work aims to investigate new indexes quantitatively differentiate sleep insomnia patients from healthy subjects, in the context of sleep onset fluctuations. Our study included the use of existing PSG dataset, of 20 healthy subjects and 20 insomniac subjects. The differences between normal sleepers and insomniacs was investigated, in terms of dynamics and content of Sleep Onset (SO) process. An automated system was created to achieve this and it consists of six steps: 1) preprocessing of signals 2) feature extraction 3) classification 4) automatic scoring 5) sleep onset detection 6) identification of subject groups. The pre-processing step consisted of the removal of noise and movement artifacts from the signals. The feature extracting step consists of extracting time, frequency and non-linear features of Electroencephalogram (E EG) and Electromyogram (EMG) signals. In the third step, classification was done using ANN (Artificial Neural Networks) classifier. The fourth step consisted of scoring sleep stages (wake, SI, S2, S3 and REM) and produced a hypnogram. In the fifth step, we are detecting sleep onset from our automatic detected hypnogram and identified time of SO reference point and the combination of stages. In the final step we differentiated healthy subjects from insomniac patients based on the parameters calculated in the fifth step. 2015 Conference or Workshop Item PeerReviewed Dissanayaka, Chamila and Abdullah, Haslaile and Ahmed, Beena and Penzel, Thomas and Cvetkovic, Dean (2015) Classification of healthy subjects and insomniac patients based on automated sleep onset detection. In: International Conference for Innovation in Biomedical Engineering and Life Sciences, 6-8 Dec, 2015, Kuala Lumpur, Malaysia. http://www.springer.com/br/book/9789811002656 |
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TK Electrical engineering. Electronics Nuclear engineering Dissanayaka, Chamila Abdullah, Haslaile Ahmed, Beena Penzel, Thomas Cvetkovic, Dean Classification of healthy subjects and insomniac patients based on automated sleep onset detection |
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This work aims to investigate new indexes quantitatively differentiate sleep insomnia patients from healthy subjects, in the context of sleep onset fluctuations. Our study included the use of existing PSG dataset, of 20 healthy subjects and 20 insomniac subjects. The differences between normal sleepers and insomniacs was investigated, in terms of dynamics and content of Sleep Onset (SO) process. An automated system was created to achieve this and it consists of six steps: 1) preprocessing of signals 2) feature extraction 3) classification 4) automatic scoring 5) sleep onset detection 6) identification of subject groups. The pre-processing step consisted of the removal of noise and movement artifacts from the signals. The feature extracting step consists of extracting time, frequency and non-linear features of Electroencephalogram (E EG) and Electromyogram (EMG) signals. In the third step, classification was done using ANN (Artificial Neural Networks) classifier. The fourth step consisted of scoring sleep stages (wake, SI, S2, S3 and REM) and produced a hypnogram. In the fifth step, we are detecting sleep onset from our automatic detected hypnogram and identified time of SO reference point and the combination of stages. In the final step we differentiated healthy subjects from insomniac patients based on the parameters calculated in the fifth step. |
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Conference or Workshop Item |
author |
Dissanayaka, Chamila Abdullah, Haslaile Ahmed, Beena Penzel, Thomas Cvetkovic, Dean |
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Dissanayaka, Chamila Abdullah, Haslaile Ahmed, Beena Penzel, Thomas Cvetkovic, Dean |
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Dissanayaka, Chamila |
title |
Classification of healthy subjects and insomniac patients based on automated sleep onset detection |
title_short |
Classification of healthy subjects and insomniac patients based on automated sleep onset detection |
title_full |
Classification of healthy subjects and insomniac patients based on automated sleep onset detection |
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Classification of healthy subjects and insomniac patients based on automated sleep onset detection |
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Classification of healthy subjects and insomniac patients based on automated sleep onset detection |
title_sort |
classification of healthy subjects and insomniac patients based on automated sleep onset detection |
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2015 |
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http://eprints.utm.my/id/eprint/62171/ http://www.springer.com/br/book/9789811002656 |
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