Football movement profile analysis and creatine kinase relationships in youth national team players

Author:

Szigeti György12ORCID,Schuth Gábor12,Kovács Tamás1,Revisnyei Péter3,Pasic Alija3,Szilas Ádám1,Gabbett Tim456,Pavlik Gábor2

Affiliation:

1. Department of Sport Medicine and Sport Science, Hungarian Football Federation, Budapest, Hungary

2. Department of Health Sciences and Sport Medicine, University of Physical Education, Budapest, Hungary

3. MTA-BME Information Systems Research Group, Budapest University of Technology and Economics (BME), Budapest, Hungary

4. Gabbett Performance Solutions, Brisbane, QLD, Australia

5. Centre for Health Research, University of Southern Queensland, Ipswich, QLD, Australia

6. Health Innovation and Transformation Centre, Federation University, Ballarat, VIC, Australia

Abstract

AbstractObjectiveCreatine kinase (CK) is widely used as a monitoring tool to make inferences on fatigue and readiness in elite soccer. Previous studies have examined the relationship between CK and GPS parameters, however these metrics may not accurately describe the players' load during soccer-specific movements. Football Movement Profile (FMP) monitoring is a viable option for such purposes, providing solely inertial sensor-based data and categorizing movements according to intensity (very low, low, medium, high) and movement type (running-linear locomotive, dynamic – change of direction or speed).MethodsWe investigated the relationship between the FMP distribution of youth (U16–U21) national team soccer players and the absolute day-to-day change in CK. We applied Spearman's correlations, principal component analysis and K-means clustering to classify players' CK responses according to their specific FMP.ResultsModerate to large negative associations were found between very low intensity FMP parameters and CK change (r = −0.43 ± 0.12) while large positive associations were identified between CK change and other FMP metrics (r = 0.62 ± 0.12). Best fitting clustering methods were used to group players depending on their CK sensitivity to FMP values. Principal component analysis explained 83.0% of the variation with a Silhouette score of 0.61 for the 4 clusters.ConclusionsOur results suggest that soccer players can be clustered based on the relationship between FMP measures and the CK change. These findings can help to plan soccer training or recovery sessions according to the desired load on skeletal muscle, as FMP monitoring might bridge the limitations of GPS telemetry.

Publisher

Akademiai Kiado Zrt.

Subject

Physiology (medical)

Reference30 articles.

1. The evolution of physical and technical performance parameters in the English Premier League;Barnes C,2014

2. Monitoring accumulated training and match load in football: a systematic review;Teixeira JE,2021

3. Validity and reliability of GPS and LPS for measuring distances covered and sprint mechanical properties in team sports;Hoppe WM,2018

4. Validity and reliability of an inertial sensor device for specific running patterns in soccer;Pillitteri G,2021

5. The football movement profile of youth national team players;Szigeti G,2021

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