Abstract

People with sleep apnea (SA) are at increased risk of having stroke and cardiovascular diseases. Polysomnography (PSG) is used to detect SA. This paper conducts feature selection from PSG signals and uses a support vector machine (SVM) to detect SA. To analyze SA, the Physionet Apnea Database was used to obtain various features. Electrocardiography (ECG), oxygen saturation (SaO2), airflow, abdominal, and thoracic signals were used to provide various frequency-, time-domain and non-linear features (n = 87). To analyse the significance of these features, firstly, two evaluation measures, the rank-sum method and the analysis of variance (ANOVA) were used to evaluate the significance of the features. These features were then classified according to their significance. Finally, different class feature sets were presented as inputs for an SVM classifier to detect the onset of SA. The hill-climbing feature selection algorithm and the k-fold cross-validation method were applied to evaluate each classification performance. Through the experiments, we discovered that the best feature set (including the top-five significant features) obtained the best classification performance. Furthermore, we plotted receiver operating characteristic (ROC) curves to examine the performance of the SVM, and the results showed the SVM with Linear kernel (regularization parameter = 1) outperformed other classifiers (area under curve = 95.23%, sensitivity = 94.29%, specificity = 96.17%). The results confirm that feature subsets based on multiple bio-signals have the potential to identify patients with SA. The use of a smaller subset avoids dimensionality problems and reduces the computational load.

Highlights

  • During sleep, three basic respiratory disturbances are found

  • Linear, Polynomial and Radial basis function (RBF) affected the performance of the support vector machine (SVM)

  • R is used in Linear, Polynomial and RBF

Read more

Summary

Introduction

In these types, the most common disorder is sleep apnea (SA). SA can cause a complete breathing cessation, and the cessation lasts more than s [1]. The sleep of people with SA is fragmented, and SA reduces the refreshing effects of sleep [2]. It can cause daytime sleepiness that has secondary risks such as vehicular accidents. The apnea/hypopnea index (AHI) can evaluate SA. It is considered to be the number of apnea and hypopnea events per hour. If it is greater than five or the minimum

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call