OBJECTIVE: Respiratory rate (RR) estimation algorithms based on the photoplethymogram (PPG) and electrocardiogram (ECG) lack clinical robustness. This is because the PPG and ECG respiratory modulations are dependent on patient physiology, regardless of general signal quality. The present work describes an RR estimation algorithm using respiratory quality indices (RQIs) that assess the presence or absence of the PPG- and ECG-derived respiratory modulations. METHODS: Six respiratory waveforms are derived from the amplitude modulation, frequency modulation, and baseline wander of the PPG and ECG. The respiratory quality of each modulation is assessed by using RQIs based on the fast Fourier transform, autoregression, and autocorrelation. The individual RQIs are fused to obtain a single RQI per modulation per time window. Based on a tunable threshold, the RQIs are used to discard poor modulations and weight the remaining modulations to provide a single RR estimation per time window. RESULTS: The proposed method was tested on two independent datasets and found that using a conservative threshold, the mean absolute error was 0.71 $\pm$ 0.89 and 3.12 $\pm$ 4.39 brpm while discarding only 1.3% and 23.2% of all time windows, for each dataset, respectively. CONCLUSION: These errors are either better than or comparable to current methods, and the number of windows discarded is far lower demonstrating improved robustness. SIGNIFICANCE: This work describes a novel preprocessing algorithm that can be implemented in conjunction with other RR estimation techniques to improve robustness by specifically considering the quality of the respiratory information.
OBJECTIVE: Respiratory rate (RR) estimation algorithms based on the photoplethymogram (PPG) and electrocardiogram (ECG) lack clinical robustness. This is because the PPG and ECG respiratory modulations are dependent on patient physiology, regardless of general signal quality. The present work describes an RR estimation algorithm using respiratory quality indices (RQIs) that assess the presence or absence of the PPG- and ECG-derived respiratory modulations. METHODS: Six respiratory waveforms are derived from the amplitude modulation, frequency modulation, and baseline wander of the PPG and ECG. The respiratory quality of each modulation is assessed by using RQIs based on the fast Fourier transform, autoregression, and autocorrelation. The individual RQIs are fused to obtain a single RQI per modulation per time window. Based on a tunable threshold, the RQIs are used to discard poor modulations and weight the remaining modulations to provide a single RR estimation per time window. RESULTS: The proposed method was tested on two independent datasets and found that using a conservative threshold, the mean absolute error was 0.71 $\pm$ 0.89 and 3.12 $\pm$ 4.39 brpm while discarding only 1.3% and 23.2% of all time windows, for each dataset, respectively. CONCLUSION: These errors are either better than or comparable to current methods, and the number of windows discarded is far lower demonstrating improved robustness. SIGNIFICANCE: This work describes a novel preprocessing algorithm that can be implemented in conjunction with other RR estimation techniques to improve robustness by specifically considering the quality of the respiratory information.
Authors: Asim H Gazi; Matthew T Wittbrodt; Anna B Harrison; Srirakshaa Sundararaj; Nil Z Gurel; Jonathon A Nye; Amit J Shah; Viola Vaccarino; J Douglas Bremner; Omer T Inan Journal: IEEE Trans Biomed Eng Date: 2022-01-20 Impact factor: 4.538
Authors: Peter H Charlton; Panicos A Kyriaco; Jonathan Mant; Vaidotas Marozas; Phil Chowienczyk; Jordi Alastruey Journal: Proc IEEE Inst Electr Electron Eng Date: 2022-03-11 Impact factor: 10.961
Authors: Peter H Charlton; Drew A Birrenkott; Timothy Bonnici; Marco A F Pimentel; Alistair E W Johnson; Jordi Alastruey; Lionel Tarassenko; Peter J Watkinson; Richard Beale; David A Clifton Journal: IEEE Rev Biomed Eng Date: 2017-10-24
Authors: Julian Leube; Johannes Zschocke; Maria Kluge; Luise Pelikan; Antonia Graf; Martin Glos; Alexander Müller; Ronny P Bartsch; Thomas Penzel; Jan W Kantelhardt Journal: Sci Rep Date: 2020-09-03 Impact factor: 4.379
Authors: José Oscar Olmedo-Aguirre; Josimar Reyes-Campos; Giner Alor-Hernández; Isaac Machorro-Cano; Lisbeth Rodríguez-Mazahua; José Luis Sánchez-Cervantes Journal: Biosensors (Basel) Date: 2022-01-27