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Acquiring Respiration Rate from Photoplethysmographic Signal by Recursive Bayesian Tracking of Intrinsic Modes in Time-Frequency Spectra

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2018 May 26
PMID 29795007
Citations 6
Authors
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Abstract

Respiration rate (RR) provides useful information for assessing the status of a patient. We propose RR estimation based on photoplethysmography (PPG) because the blood perfusion dynamics are known to carry information on breathing, as respiration-induced modulations in the PPG signal. We studied the use of amplitude variability of transmittance mode finger PPG signal in RR estimation by comparing four time-frequency (TF) representation methods of the signal cascaded with a particle filter. The TF methods compared were short-time Fourier transform (STFT) and three types of synchrosqueezing methods. The public VORTAL database was used in this study. The results indicate that the advanced frequency reallocation methods based on synchrosqueezing approach may present improvement over linear methods, such as STFT. The best results were achieved using wavelet synchrosqueezing transform, having a mean absolute error and median error of 2.33 and 1.15 breaths per minute, respectively. Synchrosqueezing methods were generally more accurate than STFT on most of the subjects when particle filtering was applied. While TF analysis combined with particle filtering is a promising alternative for real-time estimation of RR, artefacts and non-respiration-related frequency components remain problematic and impose requirements for further studies in the areas of signal processing algorithms an PPG instrumentation.

Citing Articles

Machine Learning-Based Respiration Rate and Blood Oxygen Saturation Estimation Using Photoplethysmogram Signals.

Shuzan M, Chowdhury M, Chowdhury M, Murugappan M, Hoque Bhuiyan E, Ayari M Bioengineering (Basel). 2023; 10(2).

PMID: 36829661 PMC: 9952751. DOI: 10.3390/bioengineering10020167.


Pseudo-Bayesian Approach for Robust Mode Detection and Extraction Based on the STFT.

Legros Q, Fourer D Sensors (Basel). 2023; 23(1).

PMID: 36616684 PMC: 9823350. DOI: 10.3390/s23010085.


Lightweight End-to-End Deep Learning Solution for Estimating the Respiration Rate from Photoplethysmogram Signal.

Chowdhury M, Shuzan M, Chowdhury M, Reaz M, Mahmud S, Al Emadi N Bioengineering (Basel). 2022; 9(10).

PMID: 36290527 PMC: 9598342. DOI: 10.3390/bioengineering9100558.


Multitask Siamese Network for Remote Photoplethysmography and Respiration Estimation.

Lee H, Lee J, Kwon Y, Kwon J, Park S, Sohn R Sensors (Basel). 2022; 22(14).

PMID: 35890781 PMC: 9321619. DOI: 10.3390/s22145101.


PPGTempStitch: A MATLAB Toolbox for Augmenting Annotated Photoplethsmogram Signals.

Tang Q, Chen Z, Menon C, Ward R, Elgendi M Sensors (Basel). 2021; 21(12).

PMID: 34200635 PMC: 8229401. DOI: 10.3390/s21124007.


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