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Towards detection of sleep apnea events by combining different non-contact measurement modalities

机译:通过结合不同的非接触式测量方式来检测睡眠呼吸暂停事件

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In this work, we extract features from an under-the-mattress impulse radio ultra-wide band (IR-UWB) radar and a microphone, placed on the side table of the bed, to classify epochs belonging to normal sleep and those that contain an apnea event in them. Sleep apnea is the most common form of sleep related breathing disorder in adults with an estimated prevalance of 5-15%. The common diagnostic process for sleep apnea, polysomnography (PSG), involves sleeping in well-equipped sleep clinics. The cost and discomfort associated with the process has spurred research towards the design of portable home-based monitoring devices. However, these include sensors which need to be attached to patients at various locations on the body. In this preliminary and on-going study, we collected 18 hours of data of 3 subjects who were previously diagnosed with sleep apnea. The data was recorded using non-contact sensors, an IR-UWB radar and a microphone, in a sleep clinic along with the time synchronized gold-standard PSG data. A simple linear classifier was used to perform binary classification between normal and apnea epochs and the performance was analyzed compared to the true results provided by the PSG. It was observed, that combining snore features from the microphone data improves the overall accuracy of the classifier.
机译:在这项工作中,我们从床旁桌子上的床垫下脉冲无线电超宽带(IR-UWB)雷达和麦克风中提取特征,以对属于正常睡眠的时期和包含正常睡眠的时期进行分类他们发生了呼吸暂停事件。睡眠呼吸暂停是成年人与呼吸有关的呼吸障碍的最常见形式,估计患病率为5-15%。睡眠呼吸暂停的常见诊断过程是多导睡眠图(PSG),涉及在设备齐全的睡眠诊所中进行睡眠。与该过程相关的成本和不适感促使人们对便携式家用监控设备的设计进行了研究。但是,这些传感器包括需要在身体各个位置连接到患者的传感器。在这项持续的初步研究中,我们收集了3例先前被诊断出患有睡眠呼吸暂停的受试者的18个小时数据。该数据是在睡眠诊所中使用非接触式传感器,IR-UWB雷达和麦克风进行记录的,同时还记录了时间同步的金标准PSG数据。一个简单的线性分类器用于在正常和呼吸暂停时期之间进行二进制分类,并与PSG提供的真实结果进行了比较。观察到,将来自麦克风数据的打ore特征组合起来可以提高分类器的整体准确性。

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