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Predicting Hydration Status Using Machine Learning Models From Physiological and Sweat Biomarkers During Endurance Exercise: A Single Case Study

Wang, Shu; Lafaye, Celine; Saubade, Mathieu; Besson, Cyril; Margarit-Taule, Josep Maria; Gremeaux, Vincent; Liu, Shih-Chii (2022). Predicting Hydration Status Using Machine Learning Models From Physiological and Sweat Biomarkers During Endurance Exercise: A Single Case Study. IEEE Journal of Biomedical and Health Informatics, 26(9):4725-4732.

Abstract

Improper hydration routines can reduce athletic performance. Recent studies show that data from noninvasive biomarker recordings can help to evaluate the hydration status of subjects during endurance exercise. These studies are usually carried out on multiple subjects. In this work, we present the first study on predicting hydration status using machine learning models from single-subject experiments, which involve 32 exercise sessions of constant moderate intensity performed with and without fluid intake. During exercise, we measured four noninvasive physiological and sweat biomarkers including heart rate, core temperature, sweat sodium concentration, and whole-body sweat rate. Sweat sodium concentration was measured from six body regions using absorbent patches. We used three machine learning models to determine the percentage of body weight loss as an indicator of dehydration with these biomarkers and compared the prediction accuracy. The results on this single subject show that these models gave similar mean absolute errors, while in general the nonlinear models slightly outperformed the linear model in most of the experiments. The prediction accuracy of using the whole-body sweat rate or heart rate was higher than using core temperature or sweat sodium concentration. In addition, the model trained on the sweat sodium concentration collected from the arms gave slightly better accuracy than from the other five body regions. This exploratory work paves the way for the use of these machine learning models to develop personalized health monitoring together with emerging, noninvasive wearable sensor devices.

Additional indexing

Item Type:Journal Article, not_refereed, original work
Communities & Collections:07 Faculty of Science > Institute of Neuroinformatics
Dewey Decimal Classification:570 Life sciences; biology
Scopus Subject Areas:Physical Sciences > Computer Science Applications
Health Sciences > Health Informatics
Physical Sciences > Electrical and Electronic Engineering
Health Sciences > Health Information Management
Uncontrolled Keywords:Health Information Management, Electrical and Electronic Engineering, Computer Science Applications, Health Informatics
Language:English
Date:1 September 2022
Deposited On:17 Oct 2022 11:29
Last Modified:27 Nov 2024 02:38
Publisher:Institute of Electrical and Electronics Engineers
ISSN:2168-2194
OA Status:Green
Publisher DOI:https://doi.org/10.1109/jbhi.2022.3186150
PubMed ID:35749337
Project Information:
  • Funder: SNSF
  • Grant ID: CRSII5_177255
  • Project Title: WeCare: Cognitive-Multisensing Wearable Sweat Biomonitoring Technology for Real-Time Personalized Diagnosis and Preventive Health Care
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