Applied Sciences, Vol. 15, Pages 4749: Algorithm-Based Real-Time Analysis of Heart Rate Measures in HIIT Training: An Automated Approach


Applied Sciences, Vol. 15, Pages 4749: Algorithm-Based Real-Time Analysis of Heart Rate Measures in HIIT Training: An Automated Approach

Applied Sciences doi: 10.3390/app15094749

Authors:
Sergio Amat
Sonia Busquier
Carlos D. Gómez-Carmona
Manuel Gómez-López
José Pino-Ortega

High-intensity interval training (HIIT) is widely used in sports and health due to its cardiovascular and metabolic benefits, requiring accurate monitoring of heart rate variations to assess performance. This study proposes an automated algorithm to identify key heart rate parameters in real time, eliminating the need for manual supervision. The algorithm detects local maxima and minima in the heart rate signals recorded during HIIT sessions and calculates ascending and descending slopes, as well as intermediate averages, to evaluate cardiovascular response and recovery. The results demonstrate that the algorithm effectively identifies these parameters in all analyzed cases, providing objective insights into an athlete’s fitness level. Higher ascending slopes and lower descending slopes were associated with poorer physical condition, while a progressive increase in maxima and minima indicated proper HIIT execution and cardiovascular adaptation. This automated approach enhances performance monitoring, enabling personalized training adjustments and long-term fitness tracking. Future research should explore its applicability across different training populations and integrate additional physiological metrics.



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Sergio Amat www.mdpi.com