Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Classification and automatic scoring of arousal intensity during sleep stages using machine learning

View through CrossRef
AbstractArousal during sleep can result in sleep fragmentation and various physiological effects, impairing cognitive function and raising blood pressure and heart rate. However, the current definition of arousal has limitations in assessing both amplitude and duration, making it challenging to measure sleep fragmentation accurately. Moreover, there is inconsistency among inter-raters in arousal scoring, which renders it susceptible to subjective variability. Therefore, this study aims to identify a highly accurate classifier for each sleep stage by employing optimized feature selection and machine learning models. According to electroencephalography (EEG) signals during the arousal phase, the intensity level was categorized into four levels. For control, the non-arousal cases were used as level 0 and referred as sham arousal, resulting in five arousal intensity levels. Wavelet transform was applied to analyze sleep arousal to extract features from EEG. Based on these features, we classified arousal intensity levels through machine learning algorithms. Due to the different characteristics of EEG in each sleep stage, the classification model was optimized for the four sleep stages. Excluding sham arousals, a total of 13,532 arousal events were used. The lowest intensity in the entire data, level 1, was computed to be 3107, level 2 was 3384, level 3 was 3472, and the highest intensity of level 4 was 3,569. The optimized classification model for each sleep stage achieved an average sensitivity of 82.68%, specificity of 95.68%, and AUROC of 96.30%. The sensitivity of the control, arousal intensity level 0, was 83.07%, a 1.25% increase over the unoptimized model and a 14.22% increase over previous research. This study used machine learning techniques to develop classifiers for each sleep stage, improving the accuracy of arousal intensity classification. The classifiers showed high sensitivity and specificity and revealed the unique characteristics of arousal intensity during different sleep stages. These findings represent a novel approach to arousal research and have implications for developing more accurate predictive models in sleep research.
Title: Classification and automatic scoring of arousal intensity during sleep stages using machine learning
Description:
AbstractArousal during sleep can result in sleep fragmentation and various physiological effects, impairing cognitive function and raising blood pressure and heart rate.
However, the current definition of arousal has limitations in assessing both amplitude and duration, making it challenging to measure sleep fragmentation accurately.
Moreover, there is inconsistency among inter-raters in arousal scoring, which renders it susceptible to subjective variability.
Therefore, this study aims to identify a highly accurate classifier for each sleep stage by employing optimized feature selection and machine learning models.
According to electroencephalography (EEG) signals during the arousal phase, the intensity level was categorized into four levels.
For control, the non-arousal cases were used as level 0 and referred as sham arousal, resulting in five arousal intensity levels.
Wavelet transform was applied to analyze sleep arousal to extract features from EEG.
Based on these features, we classified arousal intensity levels through machine learning algorithms.
Due to the different characteristics of EEG in each sleep stage, the classification model was optimized for the four sleep stages.
Excluding sham arousals, a total of 13,532 arousal events were used.
The lowest intensity in the entire data, level 1, was computed to be 3107, level 2 was 3384, level 3 was 3472, and the highest intensity of level 4 was 3,569.
The optimized classification model for each sleep stage achieved an average sensitivity of 82.
68%, specificity of 95.
68%, and AUROC of 96.
30%.
The sensitivity of the control, arousal intensity level 0, was 83.
07%, a 1.
25% increase over the unoptimized model and a 14.
22% increase over previous research.
This study used machine learning techniques to develop classifiers for each sleep stage, improving the accuracy of arousal intensity classification.
The classifiers showed high sensitivity and specificity and revealed the unique characteristics of arousal intensity during different sleep stages.
These findings represent a novel approach to arousal research and have implications for developing more accurate predictive models in sleep research.

Related Results

Clinical impact of manual scoring of peripheral arterial tonometry in patients with sleep apnea
Clinical impact of manual scoring of peripheral arterial tonometry in patients with sleep apnea
Abstract Purpose The objective was to analyze the clinical implications of manual scoring of sleep studies using peripheral arterial tonometry (PAT)...
The history of sleep research and sleep medicine in Europe
The history of sleep research and sleep medicine in Europe
SummarySleep became a subject of scientific research in the second half of the 19th century. Since sleep, unlike other physiological functions, cannot be attributed to a specific o...
Median Preoptic Astrocytes: Role in Sleep Regulation and Potential Mediators of Sex Differences
Median Preoptic Astrocytes: Role in Sleep Regulation and Potential Mediators of Sex Differences
One in three Americans suffer from chronic sleep disorders, and women are 40% more likely than men to experience sleep disorders. This disparity emerges at puberty and is strongly ...
Reward does not facilitate visual perceptual learning until sleep occurs
Reward does not facilitate visual perceptual learning until sleep occurs
ABSTRACTA growing body of evidence indicates that visual perceptual learning (VPL) is enhanced by reward provided during training. Another line of studies has shown that sleep foll...
The Diagnostic Value of the Sleep EEG With and Without Sleep Deprivation in Patients With Atypical Absences
The Diagnostic Value of the Sleep EEG With and Without Sleep Deprivation in Patients With Atypical Absences
Summary: Hitherto it has not been known whether or not the sleep EEG after sleep deprivation is more effective than the simple or drug‐induced sleep EEG. To investigate this, we r...
Nurse-delivered sleep restriction therapy to improve insomnia disorder in primary care: the HABIT RCT
Nurse-delivered sleep restriction therapy to improve insomnia disorder in primary care: the HABIT RCT
Background Insomnia is a prevalent and distressing sleep disorder. Multicomponent cognitive–behavioural therapy is the recommended first-line treatment, but access remains extremel...
The association between sleep and depressive symptoms in US adults: data from the NHANES (2007–2014)
The association between sleep and depressive symptoms in US adults: data from the NHANES (2007–2014)
Abstract Aims To assess the association of sleep factors (sleep duration, trouble sleeping, sleep disorder) and combined sleep behaviours with the risk of clinically ...

Back to Top