Abstract:
Sleep staging is an essential aspect of sleep assessment and disease diagnosis. Polysomnography(PSG) is commonly used to record electroencephalography(EEG) signals, which produce distinct patterns during different sleep stages. Automatic identification of these stages is crucial in
diagnosing and treating sleep related disorders. This study focuses on the
classification of sleep stages using polysomnography (PSG) data. The main
objectives are to predict five-class sleep stages (Wake, N1, N2, N3, and
REM) using EEG data from the Haaglanden Medisch Centrum (HMC)
dataset, comparison Of light, deep, and wake sleep stages, and examine
the predictive power of subject data from the Sleep Physionet dataset in
predicting the sleep stages of other subjects. The dataset contains EEG
sleep recordings of 154 subjects of which only 50 were investigated by
using two machine learning models which are: Random Forest Classifier
and XG Boost. The results and findings of this research indicate that the
Random Forest Classifier algorithm achieved an accuracy of 82.62%, outperforming the XG Boost algorithm in sleep stage classification using the
given dataset. The findings suggest that the Random Forest Classifier is
a more effective model for sleep stage classification using PSG data. The
study demonstrates the potential of using machine learning techniques for
accurate sleep stage prediction. Further research can explore the generalizability of the model across different datasets and investigate the impact of
additional features on classification accuracy. Our research makes contribution by investigating the application of Event-Related Potentials (ERP)
in effectively categorizing sleep stages based on PSG data. ERP, which
measures neural activity in response to specific stimuli, offers valuable insights into the underlying cognitive processes during sleep. By integrating
ERP analysis into our classification approach, we aimed at enhancement
of precision and interpretability of sleep stage identification. Our findings
highlight the significance of incorporating ERP analysis as a supplementary technique alongside traditional EEG features, thereby advancing the
understanding and diagnosis of sleep-related disorders.
Description:
Supervised by
Dr. Md. Azam Hossain,
Department of Computer Science and Engineering(CSE),
Islamic University of Technology(IUT),
Board Bazar, Gazipur-1704, Bangladesh