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睡眠期间使用一个置于枕头下的传感器进行呼吸节律和脉搏率的无约束检测。

Unconstrained detection of respiration rhythm and pulse rate with one under-pillow sensor during sleep.

作者信息

Chen W, Zhu X, Nemoto T, Kanemitsu Y, Kitamura K, Yamakoshi K

机构信息

Department of Computer Software, University of Aizu, Aizu-wakamatsu City, Japan.

出版信息

Med Biol Eng Comput. 2005 Mar;43(2):306-12. doi: 10.1007/BF02345970.

Abstract

A completely non-invasive and unconstrained method is proposed to detect respiration rhythm and pulse rate during sleep. By employing wavelet transformation (WT), waveforms corresponding to the respiration rhythm and pulse rate can be extracted from a pulsatile pressure signal acquired by a pressure sensor under a pillow. The respiration rhythm was obtained by an upward zero-crossing point detection algorithm from the respiration-related waveform reconstructed from the WT 2(6) scale approximation, and the pulse rate was estimated by a peak point detection algorithm from the pulse-related waveform reconstructed from the WT 2(4) and 2(5) scale details. The finger photo-electric plethysmogram (FPP) and nasal thermistor signals were recorded simultaneously as reference signals. The reference pulse rate and respiration rhythm were detected with the peak and upward zero-crossing point detection algorithm. This method was verified using about 24 h of data collected from 13 healthy subjects. The results showed that, compared with the reference data, the average error rates were 3.03% false negative and 1.47% false positive for pulse rate detection in the extracted pulse waveform. Similarly, 4.58% false negative and 3.07% false positive were obtained for respiration rhythm detection in the extracted respiration waveform. This study suggests that the proposed method is suitable, in sleep monitoring, for the diagnosis of sleep apnoea or sudden death syndrome.

摘要

本文提出了一种完全非侵入性且无约束的方法来检测睡眠期间的呼吸节律和脉搏率。通过采用小波变换(WT),可以从置于枕头下的压力传感器采集的脉动压力信号中提取与呼吸节律和脉搏率相对应的波形。呼吸节律通过从WT 2(6)尺度近似重建的与呼吸相关的波形,利用向上过零点检测算法获得;脉搏率则通过从WT 2(4)和2(5)尺度细节重建的与脉搏相关的波形,利用峰值点检测算法进行估计。同时记录手指光电体积描记图(FPP)和鼻热敏电阻信号作为参考信号。参考脉搏率和呼吸节律通过峰值和向上过零点检测算法进行检测。该方法使用从13名健康受试者收集的约24小时数据进行了验证。结果表明,与参考数据相比,在提取的脉搏波形中,脉搏率检测的平均假阴性率为3.03%,假阳性率为1.47%。同样,在提取的呼吸波形中,呼吸节律检测的假阴性率为4.58%,假阳性率为3.07%。本研究表明,所提出的方法适用于睡眠监测中睡眠呼吸暂停或猝死综合征的诊断。

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