Graduate School of Science and Engineering, Yamaguchi University, Yamaguchi, Japan.
School of Electrical Engineering and Electronic Information, Xihua University, Chengdu, China.
J Healthc Eng. 2018 Jan 10;2018:1902176. doi: 10.1155/2018/1902176. eCollection 2018.
Obstructive sleep apnea (OSA) affecting human's health is a kind of major breathing-related sleep disorders and sometimes leads to nocturnal death. Respiratory rate (RR) of a sleep breathing sound signal is an important human vital sign for OSA monitoring during whole-night sleeping. A novel sleep respiratory rate detection with high computational speed based on characteristic moment waveform (CMW) method is proposed in this paper. A portable and wearable sound device is used to acquire the breathing sound signal. And the amplitude contrast decreasing has been done first. Then, the CMW is extracted with suitable time scale parameters, and the sleep RR value is calculated by the extreme points of CMW. Experiments of one OSA case and five healthy cases are tested to validate the efficiency of the proposed sleep RR detection method. According to manual counting, sleep RR can be detected accurately by the proposed method. In addition, the apnea sections can be detected by the sleep RR values with a given threshold, and the time duration of the segmentation of the breath can be calculated for detailed evaluation of the state of OSA. The proposed method is meaningful for continued research on the sleep breathing sound signal.
阻塞性睡眠呼吸暂停(OSA)影响人类健康,是一种主要的与呼吸相关的睡眠障碍,有时会导致夜间死亡。睡眠呼吸音信号的呼吸率(RR)是 OSA 监测在整个夜间睡眠期间的重要人体生命体征。本文提出了一种基于特征矩波形(CMW)方法的、具有高速计算的新型睡眠呼吸率检测方法。使用便携式可穿戴声音设备来获取呼吸音信号。首先进行幅度对比度降低,然后提取适当时间尺度参数的 CMW,并通过 CMW 的极值计算睡眠 RR 值。对一个 OSA 病例和五个健康病例的实验进行了测试,以验证所提出的睡眠 RR 检测方法的效率。根据手动计数,该方法可以准确地检测睡眠 RR。此外,可以通过给定阈值的睡眠 RR 值检测呼吸暂停部分,并计算呼吸分段的持续时间,以详细评估 OSA 的状态。该方法对睡眠呼吸音信号的进一步研究具有重要意义。