» Articles » PMID: 35535218

Photoplethysmography-Based Respiratory Rate Estimation Algorithm for Health Monitoring Applications

Overview
Journal J Med Biol Eng
Date 2022 May 10
PMID 35535218
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: Respiratory rate can provide auxiliary information on the physiological changes within the human body, such as physical and emotional stress. In a clinical setup, the abnormal respiratory rate can be indicative of the deterioration of the patient's condition. Most of the existing algorithms for the estimation of respiratory rate using photoplethysmography (PPG) are sensitive to external noise and may require the selection of certain algorithm-specific parameters, through the trial-and-error method.

Methods: This paper proposes a new algorithm to estimate the respiratory rate using a photoplethysmography sensor signal for health monitoring. The algorithm is resistant to signal loss and can handle low-quality signals from the sensor. It combines selective windowing, preprocessing and signal conditioning, modified Welch filtering and postprocessing to achieve high accuracy and robustness to noise.

Results: The Mean Absolute Error and the Root Mean Square Error of the proposed algorithm, with the optimal signal window size, are determined to be 2.05 breaths count per minute and 2.47 breaths count per minute, respectively, when tested on a publicly available dataset. These results present a significant improvement in accuracy over previously reported methods. The proposed algorithm achieved comparable results to the existing algorithms in the literature on the BIDMC dataset (containing data of 53 subjects, each recorded for 8 min) for other signal window sizes.

Conclusion: The results endorse that integration of the proposed algorithm to a commercially available pulse oximetry device would expand its functionality from the measurement of oxygen saturation level and heart rate to the continuous measurement of the respiratory rate with good efficiency at home and in a clinical setting.

Supplementary Information: The online version contains supplementary material available at 10.1007/s40846-022-00700-z.

Citing Articles

Evaluation of Photoplethysmography-Based Monitoring of Respiration Rate During High-Intensity Interval Training: Implications for Healthcare Monitoring.

Muller M, Ebrahimkheil K, Vijgeboom T, van Eijck C, Ronner E Biosensors (Basel). 2024; 14(12).

PMID: 39727896 PMC: 11674237. DOI: 10.3390/bios14120631.


Exhaled Breath Analysis: From Laboratory Test to Wearable Sensing.

Heng W, Yin S, Chen Y, Gao W IEEE Rev Biomed Eng. 2024; 18:50-73.

PMID: 39412981 PMC: 11875904. DOI: 10.1109/RBME.2024.3481360.


Predicting stress in first-year college students using sleep data from wearable devices.

Bloomfield L, Fudolig M, Kim J, Llorin J, Lovato J, McGinnis E PLOS Digit Health. 2024; 3(4):e0000473.

PMID: 38602898 PMC: 11008774. DOI: 10.1371/journal.pdig.0000473.


A Novel Respiratory Rate Estimation Algorithm from Photoplethysmogram Using Deep Learning Model.

Chin W, Kwan B, Lim W, Tee Y, Darmaraju S, Liu H Diagnostics (Basel). 2024; 14(3).

PMID: 38337800 PMC: 10855057. DOI: 10.3390/diagnostics14030284.


Evaluation of the Photoplethysmogram-Based Deep Learning Model for Continuous Respiratory Rate Estimation in Surgical Intensive Care Unit.

Hwang C, Kim Y, Hyun J, Kim J, Lee S, Kim C Bioengineering (Basel). 2023; 10(10).

PMID: 37892952 PMC: 10604201. DOI: 10.3390/bioengineering10101222.


References
1.
Pan C, Palathra B, Leo-To W . Management of Respiratory Symptoms in Those with Serious Illness. Med Clin North Am. 2020; 104(3):455-470. DOI: 10.1016/j.mcna.2019.12.004. View

2.
Al-Halhouli A, Al-Ghussain L, El Bouri S, Liu H, Zheng D . Clinical evaluation of stretchable and wearable inkjet-printed strain gauge sensor for respiratory rate monitoring at different measurements locations. J Clin Monit Comput. 2020; 35(3):453-462. DOI: 10.1007/s10877-020-00481-3. View

3.
Fay D, Gerow K . A biologist's guide to statistical thinking and analysis. WormBook. 2013; :1-54. PMC: 3880567. DOI: 10.1895/wormbook.1.159.1. View

4.
Cicone A, Wu H . How Nonlinear-Type Time-Frequency Analysis Can Help in Sensing Instantaneous Heart Rate and Instantaneous Respiratory Rate from Photoplethysmography in a Reliable Way. Front Physiol. 2017; 8:701. PMC: 5615790. DOI: 10.3389/fphys.2017.00701. View

5.
Park C, Shin H, Lee B . Blockwise PPG Enhancement Based on Time-Variant Zero-Phase Harmonic Notch Filtering. Sensors (Basel). 2017; 17(4). PMC: 5424737. DOI: 10.3390/s17040860. View