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An Algorithm to Classify Real-World Ambulatory Status From a Wearable Device Using Multimodal and Demographically Diverse Data: Validation Study.

Publication ,  Journal Article
Popham, S; Burq, M; Rainaldi, EE; Shin, S; Dunn, J; Kapur, R
Published in: JMIR biomedical engineering
March 2023

Measuring the amount of physical activity and its patterns using wearable sensor technology in real-world settings can provide critical insights into health status.This study's aim was to develop and evaluate the analytical validity and transdemographic generalizability of an algorithm that classifies binary ambulatory status (yes or no) on the accelerometer signal from wrist-worn biometric monitoring technology.Biometric monitoring technology algorithm validation traditionally relies on large numbers of self-reported labels or on periods of high-resolution monitoring with reference devices. We used both methods on data collected from 2 distinct studies for algorithm training and testing, one with precise ground-truth labels from a reference device (n=75) and the second with participant-reported ground-truth labels from a more diverse, larger sample (n=1691); in total, we collected data from 16.7 million 10-second epochs. We trained a neural network on a combined data set and measured performance in multiple held-out testing data sets, overall and in demographically stratified subgroups.The algorithm was accurate at classifying ambulatory status in 10-second epochs (area under the curve 0.938; 95% CI 0.921-0.958) and on daily aggregate metrics (daily mean absolute percentage error 18%; 95% CI 15%-20%) without significant performance differences across subgroups.Our algorithm can accurately classify ambulatory status with a wrist-worn device in real-world settings with generalizability across demographic subgroups. The validated algorithm can effectively quantify users' walking activity and help researchers gain insights on users' health status.

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Published In

JMIR biomedical engineering

DOI

EISSN

2561-3278

ISSN

2561-3278

Publication Date

March 2023

Volume

8

Start / End Page

e43726
 

Citation

APA
Chicago
ICMJE
MLA
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Popham, S., Burq, M., Rainaldi, E. E., Shin, S., Dunn, J., & Kapur, R. (2023). An Algorithm to Classify Real-World Ambulatory Status From a Wearable Device Using Multimodal and Demographically Diverse Data: Validation Study. JMIR Biomedical Engineering, 8, e43726. https://doi.org/10.2196/43726
Popham, Sara, Maximilien Burq, Erin E. Rainaldi, Sooyoon Shin, Jessilyn Dunn, and Ritu Kapur. “An Algorithm to Classify Real-World Ambulatory Status From a Wearable Device Using Multimodal and Demographically Diverse Data: Validation Study.JMIR Biomedical Engineering 8 (March 2023): e43726. https://doi.org/10.2196/43726.
Popham S, Burq M, Rainaldi EE, Shin S, Dunn J, Kapur R. An Algorithm to Classify Real-World Ambulatory Status From a Wearable Device Using Multimodal and Demographically Diverse Data: Validation Study. JMIR biomedical engineering. 2023 Mar;8:e43726.
Popham, Sara, et al. “An Algorithm to Classify Real-World Ambulatory Status From a Wearable Device Using Multimodal and Demographically Diverse Data: Validation Study.JMIR Biomedical Engineering, vol. 8, Mar. 2023, p. e43726. Epmc, doi:10.2196/43726.
Popham S, Burq M, Rainaldi EE, Shin S, Dunn J, Kapur R. An Algorithm to Classify Real-World Ambulatory Status From a Wearable Device Using Multimodal and Demographically Diverse Data: Validation Study. JMIR biomedical engineering. 2023 Mar;8:e43726.

Published In

JMIR biomedical engineering

DOI

EISSN

2561-3278

ISSN

2561-3278

Publication Date

March 2023

Volume

8

Start / End Page

e43726