Semiautomatic Training Load Determination in Endurance Athletes

Author:

Dausin Christophe1ORCID,Ruiz-Carmona Sergio23ORCID,De Bosscher Ruben45ORCID,Janssens Kristel26ORCID,Herbots Lieven78ORCID,Heidbuchel Hein910ORCID,Hespel Peter1ORCID,Cornelissen Véronique11ORCID,Willems Rik45ORCID,La Gerche André2ORCID,Claessen Guido45ORCID,_ _

Affiliation:

1. Department of Movement Sciences, KU Leuven, Leuven, Belgium

2. Department of Cardiology, Baker Heart and Diabetes Institute, Melbourne, Australia

3. Cambridge Baker Systems Genomics Initiative, Baker Heart and Diabetes Institute, Melbourne, Australia

4. Department of Cardiovascular Sciences, KU Leuven, Leuven, Belgium

5. Department of Cardiology, University Hospitals Leuven, Leuven, Belgium

6. Exercise and Nutrition Research Program, The Mary MacKillop Institute for Health Research, ACU, Melbourne, Australia

7. Department of Cardiology, Hartcentrum, Jessa Ziekenhuis, Hasselt, Belgium

8. REVAL/BIOMED, Hasselt University, Diepenbeek, Belgium

9. Department of Cardiovascular Sciences, University of Antwerp, Antwerp, Belgium

10. Department of Cardiology, University Hospital Antwerp, Antwerp, Belgium

11. Department of Rehabilitation Sciences, KU Leuven, Leuven, Belgium

Abstract

Background: Despite endurance athletes recording their training data electronically, researchers in sports cardiology rely on questionnaires to quantify training load. This is due to the complexity of quantifying large numbers of training files. We aimed to develop a semiautomatic postprocessing tool to quantify training load in clinical studies. Methods: Training data were collected from two prospective athlete’s heart studies (Master Athlete’s Heart study and Prospective Athlete Heart study). Using in-house developed software, maximal heart rate (MaxHR) and training load were calculated from heart rate monitored during cumulative training sessions. The MaxHR in the lab was compared with the MaxHR in the field. Lucia training impulse score, based on individually based exercise intensity zones, and Edwards training impulse, based on MaxHR in the field, were compared. A questionnaire was used to determine the number of training sessions and training hours per week. Results: Forty-three athletes recorded their training sessions using a chest-worn heart rate monitor and were selected for this analysis. MaxHR in the lab was significantly lower compared with MaxHR in the field (183 ± 12 bpm vs. 188 ± 13 bpm, p < .01), but correlated strongly (r = .81, p < .01) with acceptable limits of agreement (±15.4 bpm). An excellent correlation was found between Lucia training impulse score and Edwards training impulse (r = .92, p < .0001). The quantified number of training sessions and training hours did not correlate with the number of training sessions (r = .20) and training hours (r = −.12) reported by questionnaires. Conclusion: Semiautomatic measurement of training load is feasible in a wide age group. Standard exercise questionnaires are insufficiently accurate in comparison to objective training load quantification.

Publisher

Human Kinetics

Subject

Public Health, Environmental and Occupational Health,Statistics, Probability and Uncertainty,General Psychology,General Engineering,General Computer Science

Reference22 articles.

1. Heart rate and heart rate variability of Yo-Yo IR1 and simulated match in young female basketball athletes: A comparative study;Abad, C.C.C.,2016

2. Serial left ventricular adaptations in world-class professional cyclists: Implications for disease screening and follow-up;Abergel, E.,2004

3. Wearable training-monitoring technology: Applications, challenges, and opportunities;Cardinale, M.,2017

4. Endurance exercise and the risk of cardiovascular pathology in men: A comparison between lifelong and late-onset endurance training and a non-athletic lifestyle—Rationale and design of the Master@Heart study, a prospective cohort trial;de Bosscher, R.,2021

5. Rationale and design of the PROspective ATHletic Heart (Pro@Heart) study: Long-term assessment of the determinants of cardiac remodelling and its clinical consequences in endurance athletes;de Bosscher, R.,2022

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