Title of article :
Enhancing Obstructive Apnea Disease Detection Using Dual‑Tree Complex Wavelet Transform‑Based Features and the Hybrid “K‑Means, Recursive Least‑Squares” Learning for the Radial Basis Function Network
Author/Authors :
Ostadieh, Javad Departments of Electrical Engineering and Electrical and Computer Engineering - Urmia University, Urmia, Iran , Chehel Amirani, Mehdi Departments of Electrical Engineering and Electrical and Computer Engineering - Urmia University, Urmia, Iran , Valizadeh, Morteza Departments of Electrical Engineering and Electrical and Computer Engineering - Urmia University, Urmia, Iran
Abstract :
Background: The obstructive sleep apnea (OSA) detection has become a hot research topic because
of the high risk of this disease. In this paper, we tested some powerful and low computational signal
processing techniques for this task and compared their results with the recent achievements in OSA
detection. Methods: The Dual-tree complex wavelet transform (DT-CWT) is used in this paper to
extract feature coefficients. From these coefficients, eight non-linear features are extracted and then
reduced by the Multi-cluster feature selection (MCFS) algorithm. The remaining features are applied
to the hybrid “K-means, RLS” RBF network which is a low computational rival for the Support
vector machine (SVM) networks family. Results and Conclusion: The results showed suitable OSA
detection percentage near 96% with a reduced complexity of nearly one third of the previously
presented SVM based methods.
Keywords :
Classification , feature reduction , hybrid K‑means recursive least‑squares , multi‑cluster feature selection , obstructive sleep apnea , single‑lead electrocardiogram
Journal title :
Journal of Medical Signals and Sensors (JMSS)