Abstract

The categorization of sleep stages helps to diagnose different sleep-related ailments. In this paper, an entropy-based information–theoretic approach is introduced for the automated categorization of sleep stages using multi-channel electroencephalogram (EEG) signals. This approach comprises of three stages. First, the decomposition of multi-channel EEG signals into sub-band signals or modes is performed using a novel multivariate projection-based fixed boundary empirical wavelet transform (MPFBEWT) filter bank. Second, entropy features such as bubble and dispersion entropies are computed from the modes of multi-channel EEG signals. Third, a hybrid learning classifier based on class-specific residuals using sparse representation and distances from nearest neighbors is used to categorize sleep stages automatically using entropy-based features computed from MPFBEWT domain modes of multi-channel EEG signals. The proposed approach is evaluated using the multi-channel EEG signals obtained from the cyclic alternating pattern (CAP) sleep database. Our results reveal that the proposed sleep staging approach has obtained accuracies of 91.77%, 88.14%, 80.13%, and 73.88% for the automated categorization of wake vs. sleep, wake vs. rapid eye movement (REM) vs. Non-REM, wake vs. light sleep vs. deep sleep vs. REM sleep, and wake vs. S1-sleep vs. S2-sleep vs. S3-sleep vs. REM sleep schemes, respectively. The developed method has obtained the highest overall accuracy compared to the state-of-art approaches and is ready to be tested with more subjects before clinical application.

Highlights

  • Sleep is one of the important activities of human beings and plays an important role in maintaining both mental and physical health [1,2]

  • We show the statistical analysis results of dispersion entropy (DE) and bubble entropy (BE) features obtained from the sub-band signals of each EEG channel of wake, light sleep (LS), deep sleep (DS), and rapid eye movement (REM) sleep stages

  • Classes are 87.5%, 48.37%, 71.82%, 55.41%, 84.23%, and 73.30%, respectively. These results clearly indicate that the DE and BE features successfully captured the information from multi-channel EEG recordings for the automated categorization of different sleep stage classes

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Summary

Introduction

Sleep is one of the important activities of human beings and plays an important role in maintaining both mental and physical health [1,2]. Tsinalis et al [22] have considered a convolutional neural network (CNN)-based deep learning approach for the automated categorization of sleep stages using single-channel EEG signals They have reported an overall accuracy of 74% for the discrimination of S1-sleep, S2-sleep, S3-sleep, and REM sleep stage classes. Lagnef et al [23] have extracted both time domain and spectral features from the multi-channel EEG signals and used a dendrogram-based SVM (DSVM) model for the categorization of wake, S1-sleep, S2-sleep, S3-sleep, and REM sleep types They have achieved an overall accuracy of. The hybrid learning classifier can be used for the automated categorization of different sleep stages using multi-scale entropy features extracted from the multi-channel EEG signals.

Multi-Channel EEG Database
Method
EEG Frame Evaluation
Multivariate Fixed Boundary-Based EWT Filter Bank
Entropy Features Extraction
Hybrid Learning based Classifier
Results and Discussion
Conclusions
Methods
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