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Predicting daily recovery during long-term endurance training using machine learning analysis.

Authors :
Rothschild, Jeffrey A.
Stewart, Tom
Kilding, Andrew E.
Plews, Daniel J.
Source :
European Journal of Applied Physiology; Nov2024, Vol. 124 Issue 11, p3279-3290, 12p
Publication Year :
2024

Abstract

Purpose: The aim of this study was to determine if machine learning models could predict the perceived morning recovery status (AM PRS) and daily change in heart rate variability (HRV change) of endurance athletes based on training, dietary intake, sleep, HRV, and subjective well-being measures. Methods: Self-selected nutrition intake, exercise training, sleep habits, HRV, and subjective well-being of 43 endurance athletes ranging from professional to recreationally trained were monitored daily for 12 weeks (3572 days of tracking). Global and individualized models were constructed using machine learning techniques, with the single best algorithm chosen for each model. The model performance was compared with a baseline intercept-only model. Results: Prediction error (root mean square error [RMSE]) was lower than baseline for the group models (11.8 vs. 14.1 and 0.22 vs. 0.29 for AM PRS and HRV change, respectively). At the individual level, prediction accuracy outperformed the baseline model but varied greatly across participants (RMSE range 5.5–23.6 and 0.05–0.44 for AM PRS and HRV change, respectively). Conclusion: At the group level, daily recovery measures can be predicted based on commonly measured variables, with a small subset of variables providing most of the predictive power. However, at the individual level, the key variables may vary, and additional data may be needed to improve the prediction accuracy. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
14396319
Volume :
124
Issue :
11
Database :
Complementary Index
Journal :
European Journal of Applied Physiology
Publication Type :
Academic Journal
Accession number :
180550851
Full Text :
https://doi.org/10.1007/s00421-024-05530-2