Litcius/Paper detail

Multi-stage sleep classification using photoplethysmographic sensor

Mohammod Abdul Motin, Chandan Karmakar, Marimuthu Palaniswami, Thomas Penzel, Dinesh Kumar

2023Royal Society Open Science20 citationsDOIOpen Access PDF

Abstract

The conventional approach to monitoring sleep stages requires placing multiple sensors on patients, which is inconvenient for long-term monitoring and requires expert support. We propose a single-sensor photoplethysmographic (PPG)-based automated multi-stage sleep classification. This experimental study recorded the PPG during the entire night's sleep of 10 patients. Data analysis was performed to obtain 79 features from the recordings, which were then classified according to sleep stages. The classification results using support vector machine (SVM) with the polynomial kernel yielded an overall accuracy of 84.66%, 79.62% and 72.23% for two-, three- and four-stage sleep classification. These results show that it is possible to conduct sleep stage monitoring using only PPG. These findings open the opportunities for PPG-based wearable solutions for home-based automated sleep monitoring.

Topics & Concepts

Support vector machineSleep (system call)Sleep StagesComputer scienceStage (stratigraphy)Wearable computerPhotoplethysmogramArtificial intelligencePolysomnographyPattern recognition (psychology)MedicineElectroencephalographyComputer visionEmbedded systemPaleontologyOperating systemPsychiatryFilter (signal processing)BiologyNon-Invasive Vital Sign MonitoringEEG and Brain-Computer InterfacesObstructive Sleep Apnea Research