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A Review on Current Trends in Automatic Sleep Staging Through Bio-signal Recordings and Future Challenges

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Journal Sleep Med Rev
Date 2020 Oct 5
PMID 33017770
Citations 15
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Abstract

Sleep staging is a vital process conducted in order to analyze polysomnographic data. To facilitate prompt interpretation of these recordings, many automatic sleep staging methods have been proposed. These methods rely on bio-signal recordings, which include electroencephalography, electrocardiography, electromyography, electrooculography, respiratory, pulse oximetry and others. However, advanced, uncomplicated and swift sleep-staging-evaluation is still needed in order to improve the existing polysomnographic data interpretation. The present review focuses on automatic sleep staging methods through bio-signal recording including current and future challenges.

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