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Sleep Apnea Syndrome Detection based on Biological Vibration Data from Mattress Sensor

机译:基于床垫传感器生物振动数据的睡眠呼吸暂停综合症检测

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This paper proposes the new Sleep Apnea Syndrome (SAS) detection method based on Random Forest (RF) by estimating WAKE stage (shallow sleep) and analyzing characteristics of biological vibration data at WAKE stage. In particular, the proposed method estimates the WAKE stage from the biological vibration data acquired by the mattress sensor, and detects SAS based on the differences in the distribution of contribution of each frequency to classify the WAKE stage. To investigate the effectiveness of the proposed method, in cooperation with medical institutions, we applied the proposed method to a total of 18 subjects (nine SAS patients and nine healthy subjects). The results derive the following implications: (1) SAS patients have WAKE with small biological vibrations, and the contribution of the corresponding low frequency components is high while the high frequency components, which is corresponded to large biological vibrations, is low contribution; (2) the proposed method could correctly detect SAS with 100% accuracy and non-SAS with 77.8% accuracy.
机译:本文通过估算唤醒阶段(浅睡眠)(浅睡眠),提出了基于随机林(RF)的新睡眠呼吸暂停综合征(SAS)检测方法,并在唤醒阶段分析生物振动数据的特征。特别地,所提出的方法估计来自床垫传感器获取的生物振动数据的唤醒阶段,并且基于每个频率的贡献分布的差异来检测SAS以对唤醒阶段进行分类。为了调查拟议方法的有效性,与医疗机构合作,我们将提出的方法应用于共18名受试者(九名SAS患者和九个健康受试者)。结果导出了以下影响:(1)SAS患者具有小的生物振动唤醒,相应的低频分量的贡献高,而高频分量相对应的高振动,是低贡献; (2)所提出的方法可以正确地检测100%精度和非SA的SA,精度为77.8%。

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