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Model-based data-driven approach for sleep apnea detection

机译:基于模型的数据驱动方法,用于睡眠APNEA检测

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Obstructive sleep apnea (OSA) is a serious sleep disorder affecting millions of people worldwide. There is a great need to develop an efficient, low-cost OSA detection method. Traditional OSA detection methods are purely data-driven and hence their detection performance greatly depends on the quality and quantity of the sensor data. Several mathematical models of the human cardiorespiratory system exist which can generate different physiological signals that are hard to measure using current sensor technology. In this paper, we propose a new framework for OSA detection in which we fuse the sensor data with the physiological signal data from the cardiorespiratory system models. Multivariate Gaussian processes (GPs) are used to capture and model the physiological signal variations among different individuals. We define the multivariate GP covariance function using the sum of separable kernel functions form and estimate the corresponding hyperparameters by maximizing the GP marginal likelihood function. We detect OSA using the heart rate signal on a window-by-window basis using a likelihood ratio test. We conduct several experiments on both simulated and real data to show the effectiveness of the proposed OSA detection framework. We also compare with other purely data-driven OSA detection methods to demonstrate the advantage of the proposed OSA detection fusion framework.
机译:阻塞性睡眠呼吸暂停(OSA)是一种严重的睡眠障碍,影响全世界数百万人。有很大的需要开发一种高效,低成本的OSA检测方法。传统的OSA检测方法纯粹是数据驱动的,因此它们的检测性能大大取决于传感器数据的质量和数量。存在人类心肺系统的几种数学模型,可以产生使用电流传感器技术难以测量的不同生理信号。在本文中,我们为OSA检测提出了一种新的框架,其中我们将传感器数据与来自心肺系统模型的生理信号数据熔断。多变量高斯过程(GPS)用于捕获和模拟不同个体之间的生理信号变化。我们使用可分离内核功能的总和来定义多元GP协方差函数,通过最大化GP边缘似然函数来估计相应的超参数。我们使用似然比测试使用心率信号在窗口基础上使用心率信号检测OSA。我们对模拟和实数据进行了几个实验,以显示所提出的OSA检测框架的有效性。我们还与其他纯粹的数据驱动的OSA检测方法进行比较,以演示所提出的OSA检测融合框架的优势。

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