2024
DOI: 10.1007/s00421-024-05530-2
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Predicting daily recovery during long-term endurance training using machine learning analysis

Jeffrey A. Rothschild,
Tom Stewart,
Andrew E. Kilding
et al.

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 recrea… Show more

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