Advanced Research Group, Covidien Respiratory and Monitoring Solutions, Technopole Centre, Edinburgh, EH26 0PJ, UK.
J Clin Monit Comput. 2012 Feb;26(1):45-51. doi: 10.1007/s10877-011-9332-y. Epub 2012 Jan 10.
The presence of respiratory information within the pulse oximeter signal (PPG) is a well-documented phenomenon. However, extracting this information for the purpose of continuously monitoring respiratory rate requires: (1) the recognition of the multi-faceted manifestations of respiratory modulation components within the PPG and the complex interactions among them; (2) the implementation of appropriate advanced signal processing techniques to take full advantage of this information; and (3) the post-processing infrastructure to deliver a clinically useful reported respiratory rate to the end user. A holistic algorithmic approach to the problem is therefore required. We have developed the RR(OXI) algorithm based on this principle and its performance on healthy subject trial data is described herein.
Finger PPGs were collected from a cohort of 139 healthy adult volunteers monitored during free breathing over an 8-min period. These were subsequently processed using a novel in-house algorithm based on continuous wavelet transform technology within an infrastructure incorporating weighted averaging and logical decision making processes. The computed oximeter respiratory rates (RR(oxi)) were then compared to an end-tidal CO2 reference rate RR(ETCO2).
RR(ETCO2) ranged from a lowest recorded value of 2.97 breaths per min (br/min) to a highest value of 28.02 br/min. The mean rate was 14.49 br/min with standard deviation of 4.36 br/min. Excellent agreement was found between RR(oxi) and RR(ETCO2), with a mean difference of -0.23 br/min and standard deviation of 1.14 br/min. The two measures are tightly spread around the line of agreement with a strong correlation observable between them (R2 = 0.93).
These data indicate that RR(oxi) represents a viable technology for the measurement of respiratory rate of healthy individuals.
脉搏血氧仪信号(PPG)中存在呼吸信息是一个有据可查的现象。然而,为了连续监测呼吸频率而提取此信息,需要:(1)识别 PPG 中呼吸调制成分的多方面表现及其之间的复杂相互作用;(2)实施适当的先进信号处理技术以充分利用此信息;以及(3)提供向最终用户传递临床有用的报告呼吸频率的后处理基础设施。因此,需要采用整体算法方法来解决此问题。我们已经基于此原则开发了 RR(OXI)算法,并在此介绍其在健康受试者试验数据上的性能。
从 139 名健康成年志愿者的队列中采集手指 PPG,这些志愿者在 8 分钟的自由呼吸期间进行监测。随后,使用基于连续小波变换技术的新型内部算法对其进行处理,该算法包含加权平均和逻辑决策过程。然后,将计算出的血氧仪呼吸频率(RR(oxi))与呼气末二氧化碳参考率 RR(ETCO2)进行比较。
RR(ETCO2)的范围从最低记录值 2.97 次/分钟(次/分)到最高值 28.02 次/分。平均呼吸频率为 14.49 次/分,标准偏差为 4.36 次/分。RR(oxi)和 RR(ETCO2)之间存在极好的一致性,平均差异为-0.23 次/分,标准偏差为 1.14 次/分。这两个指标紧密地围绕着一致性线展开,两者之间存在很强的相关性(R2=0.93)。
这些数据表明,RR(oxi)是测量健康个体呼吸频率的可行技术。