Javascript must be enabled to continue!
Photoplethysmographic-based automated sleep–wake classification using a support vector machine
View through CrossRef
Abstract
Objective
: Sleep quality has a significant impact on human mental and physical health. The detection of sleep–wake states is thus of paramount importance in the study of sleep. The gold standard method for sleep–wake classification is multi-sensor-based polysomnography (PSG) which is normally recorded in a clinical setting. The main drawbacks of PSG are the inconvenience to the subjects, the impact of discomfort on normal sleep cycles, and its requirement for experts’ interpretation. In contrast, we aim to design an automated approach for sleep–wake classification using a wearable fingertip photoplethysmographic (PPG) signal.
Approach
: Time domain features are extracted from PPG and PPG-based surrogate cardiac signals for sleep–wake classification. A minimal-redundancy-maximal-relevance feature selection algorithm is employed to reduce irrelevant and redundant features.
Main results
: A support vector machine (SVM)-based supervised machine-learning classifier is then used to classify sleep and wake states. The model is trained using 70% of the events (6575 sleep–wake events) from the dataset, and the remaining 30% of events (2818 sleep–wake events) are used for evaluating the performance of the model. Furthermore, the proposed model demonstrates a comparable performance (accuracy 81.10%, sensitivity 81.06%, specificity 82.50%, precision 99.37%, and F score 81.74%) with respect to the existing uni-modal and multi-modal methods for sleep–wake classification.
Significance
: This result advocates the potential of wearable PPG-based sleep–wake classification. A wearable PPG-based system would help in continuous, non-invasive monitoring of sleep quality.
Title: Photoplethysmographic-based automated sleep–wake classification using a support vector machine
Description:
Abstract
Objective
: Sleep quality has a significant impact on human mental and physical health.
The detection of sleep–wake states is thus of paramount importance in the study of sleep.
The gold standard method for sleep–wake classification is multi-sensor-based polysomnography (PSG) which is normally recorded in a clinical setting.
The main drawbacks of PSG are the inconvenience to the subjects, the impact of discomfort on normal sleep cycles, and its requirement for experts’ interpretation.
In contrast, we aim to design an automated approach for sleep–wake classification using a wearable fingertip photoplethysmographic (PPG) signal.
Approach
: Time domain features are extracted from PPG and PPG-based surrogate cardiac signals for sleep–wake classification.
A minimal-redundancy-maximal-relevance feature selection algorithm is employed to reduce irrelevant and redundant features.
Main results
: A support vector machine (SVM)-based supervised machine-learning classifier is then used to classify sleep and wake states.
The model is trained using 70% of the events (6575 sleep–wake events) from the dataset, and the remaining 30% of events (2818 sleep–wake events) are used for evaluating the performance of the model.
Furthermore, the proposed model demonstrates a comparable performance (accuracy 81.
10%, sensitivity 81.
06%, specificity 82.
50%, precision 99.
37%, and F score 81.
74%) with respect to the existing uni-modal and multi-modal methods for sleep–wake classification.
Significance
: This result advocates the potential of wearable PPG-based sleep–wake classification.
A wearable PPG-based system would help in continuous, non-invasive monitoring of sleep quality.
Related Results
Acupuncture as therapeutic resource in patient with bruxism
Acupuncture as therapeutic resource in patient with bruxism
Bruxism is the harmful habit of clenching or grinding the teeth during the day and / or night, with unconscious pattern, with particular intensity and frequency, outside the functi...
0279 Sleep Hygiene for Sleep Health in the General Population: What Does Data From Consumer Sleep Technology Tell Us?
0279 Sleep Hygiene for Sleep Health in the General Population: What Does Data From Consumer Sleep Technology Tell Us?
Abstract
Introduction
Despite being used and widely recommended since the 1970s, few studies have examined whether adherence to ...
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...
0202 Predicting Sleep Inertia in a Biomathematical Model of Fatigue and Performance: A Novel Approach
0202 Predicting Sleep Inertia in a Biomathematical Model of Fatigue and Performance: A Novel Approach
Abstract
Introduction
Biomathematical models of fatigue typically include sleep inertia as an additive process during wakefulnes...
Sleep and neurobehavioral performance during a 14-day laboratory study of split sleep/wake schedules for space operations
Sleep and neurobehavioral performance during a 14-day laboratory study of split sleep/wake schedules for space operations
This laboratory study of 90 healthy adults investigates human performance impairments resulting from sleep restriction in order to examine whether splitting sleep into a shortened ...
024 Quiescent Wakefulness: Characterising the Impact of Oxytocin on Sleep-Wake Behaviour in Male and Female Rats
024 Quiescent Wakefulness: Characterising the Impact of Oxytocin on Sleep-Wake Behaviour in Male and Female Rats
Abstract
Introduction
Oxytocin is a versatile hypothalamic neuropeptide involved in diverse neurobehavioural processes. Since ox...
0864 Severe Central Sleep Apnea
0864 Severe Central Sleep Apnea
Abstract
Introduction
Central sleep apnea (CSA) is a rare form of sleep disordered breathing with repeated apneic episodes with ...
Deep sleep homeostatic response to naturalistic sleep loss
Deep sleep homeostatic response to naturalistic sleep loss
Abstract
Introduction
Investigations of sleep homeostasis often involve tightly controlled experimental sleep deprivation in se...

