4.2 Article

Detection of Sleep Apnea Based on the Analysis of Sleep Stages Data Using Single Channel EEG

Journal

TRAITEMENT DU SIGNAL
Volume 38, Issue 2, Pages 431-436

Publisher

INT INFORMATION & ENGINEERING TECHNOLOGY ASSOC
DOI: 10.18280/ts.380221

Keywords

electroencephalogram (EEG); sleep stages; sleep disorders; sleep apnea; machine learning classifiers

Funding

  1. University Grants Commissions-South Eastern Regional Office (UGC-SERO) [6620/16]

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Sleep is essential for the restoration of both intellectual and physiological aspects of a human being. Sleep disorders can hinder performance, but analyzing sleep information can aid in diagnosing and treating associated issues.
Sleep is a basic need for a human being's intellectual and physiological restoration and overlaying nearly one 1/3 length of a daytime. A first-rate and deep sleep is required for green regeneration of the body. Sleep disorders hamper the performance of an individual. Sleep Apnea is the one amongst the disorders that affect many. Most of Apnea related works consider Electrocardiogram (ECG) and respiratory signals /or combinations, instead of considering all Polysomnographic signals (PSG). It is evident that for the detection of Apnea related sleep disorders it is required to consider one or few signals rather considering all PSG signals. In this work, we advocate a way that might be carried out to perceive the information of sleep stages which might be crucial in diagnosing and treating sleep disorders. It differentiates sleep stages and derives new features from the sleep EEG that allows helping physicians with the analysis and treatment of associated sleep issues. This theory depends on exclusive EEG datasets from Physionet with the use of MIT-BIH polysomnographic database that have been received and described through scientists for the analysis and prognosis of sleep ranges. Experimental results on 18 records with 10197 epochs show that an Apnea detection accuracy of 95.9% obtained for Machine learning classifier with Ensemble Bagged Tree classifier.

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