Back to Search Start Over

Pulse Rate Variability in Emergency Physicians During Shifts: Pilot Cross-Sectional Study.

Authors :
Peters GA
Wong ML
Joseph JW
Sanchez LD
Source :
JMIR mHealth and uHealth [JMIR Mhealth Uhealth] 2019 Oct 02; Vol. 7 (10), pp. e13909. Date of Electronic Publication: 2019 Oct 02.
Publication Year :
2019

Abstract

Background: The high prevalence of physician burnout, particularly in emergency medicine, has garnered national attention in recent years. Objective means of measuring stress while at work can facilitate research into stress reduction interventions, and wearable photoplethysmography (PPG) technology has been proposed as a potential solution. However, the use of low-burden wearable biosensors to study training and clinical practice among emergency physicians (EP) remains untested.<br />Objective: This pilot study aimed to (1) determine the feasibility of recording on-shift photoplethysmographic data from EP, (2) assess the quality of these data, and (3) calculate standard pulse rate variability (PRV) metrics from the acquired dataset and examine patterns in these variables over the course of an academic year.<br />Methods: A total of 21 EP wore PPG biosensors on their wrists during clinical work in the emergency department during a 9-hour shift. Recordings were collected during the first quarter of the academic year, then again during the fourth quarter of the same year for comparison. The overall rate of usable data collection per time was computed. Standard pulse rate (PR) and PRV metrics from these two time points were calculated and entered into Student t tests.<br />Results: More than 400 hours of data were entered into these analyses. Interpretable data were captured during 8.54% of the total recording time overall. In the fourth quarter of the academic year compared with the first quarter, there was no significant difference in median PR (75.8 vs 76.8; P=.57), mean R-R interval (0.81 vs 0.80; P=.32), SD of R-R interval (0.11 vs 0.11; P=.93), root mean square of successive difference of R-R interval (0.81 vs 0.80; P=.96), low-frequency power (3.5×103 vs 3.4×103; P=.79), high-frequency power (8.5×103 vs 8.3×103; P=.91), or low-frequency to high-frequency ratio (0.42 vs 0.41; P=.43), respectively. Power estimates for each of these tests exceeded .90. A secondary analysis of the resident-only subgroup similarly showed no significant differences over time, despite power estimates greater than .80.<br />Conclusions: Although the use of PPG biosensors to record real-time physiological data from EP while providing clinical care seems operationally feasible, this study fails to support the notion that such an approach can efficiently provide reliable estimates of metrics of interest. No significant differences in PR or PRV metrics were found at the end of the year compared with the beginning. Although these methods may offer useful applications to other domains, it may currently have limited utility in the contexts of physician training and wellness.<br /> (©Gregory Andrew Peters, Matthew L Wong, Joshua W Joseph, Leon D Sanchez. Originally published in JMIR Mhealth and Uhealth (http://mhealth.jmir.org), 02.10.2019.)

Details

Language :
English
ISSN :
2291-5222
Volume :
7
Issue :
10
Database :
MEDLINE
Journal :
JMIR mHealth and uHealth
Publication Type :
Academic Journal
Accession number :
31579017
Full Text :
https://doi.org/10.2196/13909