Abstract

Sleep disorder is a medical disease of the sleep patterns, which commonly suffered by the elderly. Sleep disorders diagnosis and treatment are considered to be challenging due to a time-consuming and inconvenient process for the patient. Moreover, the use of Polysomnography (PSG) in sleep disorder diagnosis is a high-cost process. Therefore, we propose an efficient classification method of sleep disorder by merely using electrocardiography (ECG) signals to simplify the sleep disorders diagnosis process. Different from many current related studies that applied a five-minute epoch to observe the main frequency band of the ECG signal, we perform a pre-processing technique that suitable for the 30-seconds epoch of the ECG signal. By this simplification, the proposed method has a low computational cost so that suitable to be implemented in an embedded hardware device. Structurally, the proposed method consists of five stages: (1) pre-processing, (2) spectral features extraction, (3) sleep stage detection using the Decision-Tree-Based Support Vector Machine (DTB-SVM), (4) assess the sleep quality features, and (5) sleep disorders classification using ensemble of bagged tree classifiers. We evaluate the effectiveness of the proposed method in the task of classifying the sleep disorders into four classes (insomnia, Sleep-Disordered Breathing (SDB), REM Behavior Disorder (RBD), and healthy subjects) from the 51 patients of the Cyclic Alternating Pattern (CAP) sleep data. Based on experimental results, the proposed method presents 84.01% of sensitivity, 94.17% of specificity, 86.27% of overall accuracy, and 0.70 of Cohen’s kappa. This result indicates that the proposed method able to reliably classify the sleep disorders merely using the 30-seconds epoch ECG in order to address the issue of a multichannel signal such as the PSG.

Highlights

  • The sleep disorder is a medical disease of the sleep patterns of a person

  • The results showed that the combination between adapted Heart Rate Variability (HRV) spectral features and other selected HRV non-spectral features significantly improve the overall classification performance, including the sleep and wake

  • It aims to find the optimal hyperplane with the maximum margin (m), where the margin can be calculated by dividing the integer two with the absolute function of support-vector

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Summary

Introduction

The sleep disorder is a medical disease of the sleep patterns of a person. Naturally, the elderly are easier to experience sleep disorders compared to younger people. A clinical study [7] mentioned that it is possible to detect a sleep stage and sleep disorder in the elderly using an Electrocardiogram (ECG) signal instead of complicated signal recordings. It is because each sleep stage has different cardiac dynamics, which are represented in the average of the heartbeat interval [8]. HRV performs a fluctuation analysis in the heartbeat interval so that the variation of HRV is according to the sleep stage, and reflect the activity of ANS To this end, we propose an efficient non-intrusive method to classify sleep disorders automatically for the elderly using the ECG signal alone.

Related Works
Materials and Proposed Methods
Data Description
Pre-processing
Spectral Features Extraction
Sleep Stage Detection
Assessment of Sleep Quality
Classification of Sleep Disorders
Results and Discussion
Experimental Result
Implementation Planning
Conclusions
Full Text
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