Estimation of heart rate variability from finger photoplethysmography during rest, mild exercise and mild mental stress

Author:

Singstad Bjørn-Jostein1,Azulay Naomi23,Bjurstedt Andreas1,Bjørndal Simen S.1,Drageseth Magnus F.1,Engeset Peter1,Eriksen Kari1,Gidey Muluberhan Y.1,Granum Espen O.1,Greaker Matias G.1,Grorud Amund1,Hewes Sebastian O.1,Hou Jie1,Llop Recha Adrián M.1,Matre Christoffer1,Seputis Arnoldas1,Sørensen Simen E.1,Thøgersen Vegard1,Joten Vegard Munkeby1,Tronstad Christian4,Martinsen Ørjan G.14

Affiliation:

1. Department of Physics, University of Oslo , Oslo , Norway

2. Department of Research and Development, Division of Emergencies and Critical Care, Oslo University Hospital , Oslo , Norway

3. Institute of Clinical Medicine, University of Oslo , Oslo , Norway

4. Department of Clinical and Biomedical Engineering, Oslo University Hospital , Oslo , Norway

Abstract

Abstract Due to the possibilities in miniaturization and wearability, photoplethysmography (PPG) has recently gained a large interest not only for heart rate measurement, but also for estimating heart rate variability, which is derived from ECG by convention. The agreement between PPG and ECG-based HRV has been assessed in several studies, but the feasibility of PPG-based HRV estimation is still largely unknown for many conditions. In this study, we assess the feasibility of HRV estimation based on finger PPG during rest, mild physical exercise and mild mental stress. In addition, we compare different variants of signal processing methods including selection of fiducial point and outlier correction. Based on five minutes synchronous recordings of PPG and ECG from 15 healthy participants during each of these three conditions, the PPG-based HRV estimation was assessed for the SDNN and RMSSD parameters, calculated based on two different fiducial points (foot point and maximum slope), with and without outlier correction. The results show that HRV estimation based on finger PPG is feasible during rest and mild mental stress, but can give large errors during mild physical exercise. A good estimation is very dependent on outlier correction and fiducial point selection, and SDNN seems to be a more robust parameter compared to RMSSD for PPG-based HRV estimation.

Publisher

Walter de Gruyter GmbH

Subject

Biomedical Engineering,Biophysics

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