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Sleep Breathing Disorders Detection with Bioradar Using a Long Short-Term Memory Network

机译:使用长期短期记忆网络的生物雷达检测睡眠呼吸障碍

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Development of effective non-contact ways for long-term sleep respiratory-related sleep disorders detection, which may indicate the presence of different health and lifethreatening conditions, is an up-to-date task of sleep medicine. The paper presents a device for remote long-term sleep respiration pattern monitoring based on the analysis of a bioradar signal and processing algorithm for detection respiratory-related sleep disorders. The method was validated utilizing data of 15 volunteers, which underwent a sleep study in a sleep laboratory of Almazov National Medical Research Centre. The proposed method is based on the usage of a long short-term memory network to detect breathing disorders during sleep. We achieved accuracy and Cohen’s kappa of 0.97 and 0.80 for respiratory-related sleep disorders classification, respectively. The results might be used while creating new methods for remote detection of sleep movement disorders.
机译:开发用于长期睡眠呼吸相关的睡眠障碍检测的有效非接触式方法(可能表明存在不同的健康和威胁生命的状况)是睡眠医学的最新任务。本文介绍了一种基于生物雷达信号的分析和检测与呼吸有关的睡眠障碍的处理算法的远程长期睡眠呼吸模式监测的设备。该方法已利用15名志愿者的数据进行了验证,这些志愿者在Almazov国家医学研究中心的睡眠实验室中进行了一项睡眠研究。所提出的方法是基于使用长短期记忆网络来检测睡眠期间的呼吸障碍。对于呼吸相关的睡眠障碍分类,我们分别达到0.97和0.80的准确度和科恩kappa值。在创建用于远程检测睡眠运动障碍的新方法时,可以使用该结果。

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