首页> 外文会议>IEEE MTT-S International Microwave Biomedical Conference >Obstructive Sleep Apnea (OSA) Events Classification by Effective Radar Cross Section (ERCS) Method Using Microwave Doppler Radar and Machine Learning Classifier
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Obstructive Sleep Apnea (OSA) Events Classification by Effective Radar Cross Section (ERCS) Method Using Microwave Doppler Radar and Machine Learning Classifier

机译:妨碍睡眠呼吸暂停(OSA)事件通过微波多普勒雷达和机器学习分类的有效雷达横截面(ERC)方法进行分类

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In-home sleep monitoring system using Microwave Doppler radar is gaining attention as it is unobtrusive and noncontact form of measurement. Most of the reported results in literature focused on utilizing radar-reflected signal amplitude to recognize Obstructive sleep apnea (OSA) events which requires iterative analysis and cannot recommend about sleep positions also (supine, prone and side). In this paper, we propose a new, robust and automated ERCS-based (Effective Radar Cross section) method for classifying OSA events (normal, apnea and hypopnea) by integrating radar system in a clinical setup. In our prior attempt, ERCS has been proven versatile method to recognize different sleep postures. We also employed two different machine learning classifiers (K-nearest neighbor (KNN) and Support Vector machine (SVM) to recognize OSA events from radar captured ERCS and breathing rate measurement from five different patients' clinical study. SVM with quadratic kernel outperformed with other classifiers with an accuracy of 96.7 % for recognizing different OSA events. The proposed system has several potential applications in healthcare, continuous monitoring and security/surveillance applications.
机译:在家庭睡眠监测系统,利用微波多普勒天气雷达受到关注,因为它是测量的不显眼和非接触形式。大多数文献中所报告的结果集中在利用雷达反射信号振幅来识别阻塞性睡眠呼吸暂停(OSA)的事件,需要迭代分析,不能推荐有关睡眠位置也(仰卧,俯卧和侧)。在本文中,我们提出了一种通过在临床设置集成雷达系统分类OSA事件(正常,呼吸暂停低通气)基于ERCS全新的,强大的和自动化(有效雷达横截面)方法。在我们之前的尝试,ERCS已被证明通用的方法来识别不同的睡眠姿势。我们也采用两种不同的机器学习分类器(K近邻(KNN)和支持向量机(SVM)从雷达识别OSA事件捕获ERCS并从五个不同患者的临床研究呼吸率测量。SVM与二次核优于与其他有96.7%用于识别不同OSA事件的精确度分类。所提出的系统在医疗保健的几个潜在的应用,连续监控和安全/监控应用。

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