基于呼吸速率(RR)的不同生理条件下PPG信号分析

S. A. Kazmi, M. Shah, Sheroz Khan, Othman Omran Khalifa
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引用次数: 5

摘要

本文利用光容积脉搏波(PPG)信号对不同生理条件下的呼吸速率(RR)进行了研究。在本文中,我们检查了四种生理条件,如坐,站,躺和慢跑。招募了10名健康志愿者,每组5男5女。Easy Pulse分析仪传感器模块对PPG信号进行采集,在提取样品前考虑合并状态,采集每一种条件下的1分钟样品,利用脉搏血氧测量原理,将光传感器检测到的信号通过顺序高、低通滤波器,在其输出端产生有条件的PPG信号。使用Arduino处理模块作为简易脉冲分析仪与计算机之间的接口模块。Kubios HRV工具用于执行和将PPG数据操作为所需的格式。分析了不同生理条件下PPG信号的时频域参数。最终,根据分析创建报告。结果表明,PPG信号和RR随生理条件的变化而变化。我们还敏锐地观察到,作为PPG信号组成部分的低频和高频也会随着生理条件的变化而变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Respiratory rate (RR) based analysis of PPG signal for different physiological conditions
This paper investigates the respiratory rate (RR) for different physiological conditions by implicating photoplethysmographic (PPG) signal. In this paper, we have examined four physiological conditions for instance sitting, standing, laying and jogging. Ten healthy volunteers were recruited and segregated by five males and females each group. The acquisition of PPG signal was done by Easy Pulse analyzer sensor module for one minute sample for each condition considering consolidated state prior to sample extraction, which uses pulse oximetry principle and pass the sensed signal by the optical sensor through a sequential high and low pass filters which latterly produces a conditioned PPG signal at its output. The Arduino processing module was used as an interfacing module between easy pulse analyzer and computing machine. The Kubios HRV tool was implicated for execution and manipulation of the PPG data into a required format. The time and frequency domain parameters were analyzed for PPG signal in different physiological conditions. Ultimately, the reports were created depending upon the analysis. The results defines that the PPG signal as well as RR varies depending upon the physiological conditions. It was also keenly observed that the low and high frequencies which is ingredient of PPG signal also vary accordingly to physiological condition.
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