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Open AccessJournal ArticleDOI

Quantitative Evaluation of EEG-Biomarkers for Prediction of Sleep Stages

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TLDR
The EEG-based sleep stage prediction approach is expected to be utilized in a wearable sleep monitoring system and the neurological EEG-biomarkers may be considered biomarkers for their characteristics of attenuation in NREM sleep and subsequent increase in REM sleep.
Abstract
Electroencephalography (EEG) is immediate and sensitive to neurological changes resulting from sleep stages and is considered a computing tool for understanding the association between neurological outcomes and sleep stages. EEG is expected to be an efficient approach for sleep stage prediction outside a highly equipped clinical setting compared with multimodal physiological signal-based polysomnography. This study aims to quantify the neurological EEG-biomarkers and predict five-class sleep stages using sleep EEG data. We investigated the three-channel EEG sleep recordings of 154 individuals (mean age of 53.8 ± 15.4 years) from the Haaglanden Medisch Centrum (HMC, The Hague, The Netherlands) open-access public dataset of PhysioNet. The power of fast-wave alpha, beta, and gamma rhythms decreases; and the power of slow-wave delta and theta oscillations gradually increases as sleep becomes deeper. Delta wave power ratios (DAR, DTR, and DTABR) may be considered biomarkers for their characteristics of attenuation in NREM sleep and subsequent increase in REM sleep. The overall accuracy of the C5.0, Neural Network, and CHAID machine-learning models are 91%, 89%, and 84%, respectively, for multi-class classification of the sleep stages. The EEG-based sleep stage prediction approach is expected to be utilized in a wearable sleep monitoring system.

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Accuracy of EEG Biomarkers in the Detection of Clinical Outcome in Disorders of Consciousness after Severe Acquired Brain Injury: Preliminary Results of a Pilot Study Using a Machine Learning Approach

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TL;DR: A review of the most recent research on brain-computer-interface-based non-invasive rehabilitation systems is presented in this paper , with a focus on signal acquisition, data processing, pattern recognition algorithms, and control techniques.
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EEG/fNIRS Based Workload Classification Using Functional Brain Connectivity and Machine Learning

Jun Cao, +2 more
- 01 Oct 2022 - 
TL;DR: A new framework that relies on the features of hybrid EEG–functional near-infrared spectroscopy (EEG–fNIRS) supported by machine-learning features to deal with multi-level mental workload classification is proposed, and it is determined that the best region to assist the discrimination of the mental workload for EEG and fNirS is different.
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A Review of Recent Advances in Vital Signals Monitoring of Sports and Health via Flexible Wearable Sensors

TL;DR: The paper finds that vital signals can be effectively monitored and used for health management thanks to advanced manufacturing, flexible electronics, IoT, and artificial intelligence algorithms; however, wearable sensors and systems with multidimensional and multimodal are more compliant.
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