基于小波包谱特征的支持向量机识别阻塞性睡眠呼吸暂停

Serein Al-Ratrout, A. Hossen
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引用次数: 7

摘要

睡眠呼吸暂停是指睡眠时呼吸完全或部分停止。阻塞性睡眠呼吸暂停(OSA)是最常见的呼吸相关睡眠障碍之一。专业医生使用的众所周知的可靠和标准的诊断测试是多导睡眠图睡眠研究。然而,这种测试很复杂,耗时且昂贵。因此,应用信号处理算法的无创技术更有利于从正常受试者中识别OSA患者。任何识别算法都包括两个部分:特征提取部分和特征匹配部分。在本文中,特征提取部分依赖于心率变异性信号的小波包分解技术。特征匹配部分使用支持向量机(SVM)。采用db1滤波器进行5级小波分解的线性支持向量机在MIT标准数据上的性能最高,特异度为100%,灵敏度为90%,准确率为93.34%。
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Support vector machine of wavelet packet spectral features for identification of obstructive sleep apnea
Sleep apnea is a complete or partial cessation of breathing during sleep. Obstructive sleep apnea (OSA) is one of the most common breathing-related sleep disorders. The well-known reliable and standard diagnosis test used by specialized physicians is the polysomnographic sleep study. However, this test is complex and time consuming and expensive. Therefore, a non-invasive technique applying signal-processing algorithms is of more benefits for identification of OSA patients from normal subjects. Any identification algorithm has two parts: feature extraction part and feature matching part. In this paper, the feature extraction part depends on the wavelet-packet decomposition technique of the Heart Rate Variability (HRV) signal. The feature matching part uses the support vector machine (SVM). The highest performance on MIT standard data is achieved by the linear support vector machine with 5 stages wavelet decomposition using db1 filters with specificity, sensitivity, and accuracy of 100%, 90% and 93.34%, respectively.
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