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非线性型时频分析如何以可靠的方式从光电容积脉搏波中帮助感知瞬时心率和瞬时呼吸率。

How Nonlinear-Type Time-Frequency Analysis Can Help in Sensing Instantaneous Heart Rate and Instantaneous Respiratory Rate from Photoplethysmography in a Reliable Way.

作者信息

Cicone Antonio, Wu Hau-Tieng

机构信息

Department of Information Engineering, Computer Science and Mathematics, Universitá degli Studi dell'AquilaL'Aquila, Italy.

Department of Mathematics and Statistical Science, Duke UniversityDurham, NC, United States.

出版信息

Front Physiol. 2017 Sep 22;8:701. doi: 10.3389/fphys.2017.00701. eCollection 2017.

Abstract

Despite the population of the noninvasive, economic, comfortable, and easy-to-install photoplethysmography (PPG), it is still lacking a mathematically rigorous and stable algorithm which is able to simultaneously extract from a single-channel PPG signal the instantaneous heart rate (IHR) and the instantaneous respiratory rate (IRR). In this paper, a novel algorithm called deppG is provided to tackle this challenge. deppG is composed of two theoretically solid nonlinear-type time-frequency analyses techniques, the de-shape short time Fourier transform and the synchrosqueezing transform, which allows us to extract the instantaneous physiological information from the PPG signal in a reliable way. To test its performance, in addition to validating the algorithm by a simulated signal and discussing the meaning of "instantaneous," the algorithm is applied to two publicly available batch databases, the Capnobase and the ICASSP 2015 signal processing cup. The former contains PPG signals relative to spontaneous or controlled breathing in static patients, and the latter is made up of PPG signals collected from subjects doing intense physical activities. The accuracies of the estimated IHR and IRR are compared with the ones obtained by other methods, and represent the state-of-the-art in this field of research. The results suggest the potential of deppG to extract instantaneous physiological information from a signal acquired from widely available wearable devices, even when a subject carries out intense physical activities.

摘要

尽管无创、经济、舒适且易于安装的光电容积脉搏波描记法(PPG)应用广泛,但仍缺乏一种数学上严谨且稳定的算法,该算法能够从单通道PPG信号中同时提取瞬时心率(IHR)和瞬时呼吸率(IRR)。本文提出了一种名为deppG的新颖算法来应对这一挑战。deppG由两种理论基础坚实的非线性时频分析技术组成,即去形状短时傅里叶变换和同步挤压变换,这使我们能够以可靠的方式从PPG信号中提取瞬时生理信息。为了测试其性能,除了通过模拟信号验证算法并讨论“瞬时”的含义外,该算法还应用于两个公开可用的批量数据库,即Capnobase和ICASSP 2015信号处理杯。前者包含静态患者自发或控制呼吸时的PPG信号,后者由从事剧烈体育活动的受试者采集的PPG信号组成。将估计的IHR和IRR的准确性与其他方法获得的准确性进行比较,代表了该研究领域的最新水平。结果表明,即使受试者进行剧烈体育活动,deppG也有潜力从广泛使用的可穿戴设备采集的信号中提取瞬时生理信息。

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