Football Movement Profile-Based Creatine-Kinase Prediction Performs Similarly to Global Positioning System-Derived Machine Learning Models in National-Team Soccer Players.

intertial sensor match load muscle damage training load

Journal

International journal of sports physiology and performance
ISSN: 1555-0273
Titre abrégé: Int J Sports Physiol Perform
Pays: United States
ID NLM: 101276430

Informations de publication

Date de publication:
25 Jun 2024
Historique:
received: 25 02 2024
revised: 30 04 2024
accepted: 04 05 2024
medline: 26 6 2024
pubmed: 26 6 2024
entrez: 25 6 2024
Statut: aheadofprint

Résumé

The relationship between external load and creatine-kinase (CK) response at the team/position or individual level using Global Positioning Systems (GPS) has been studied. This study aimed to compare GPS-derived and Football Movement Profile (FMP) -derived CK-prediction models for national-team soccer players. The second aim was to compare the performance of general and individualized CK prediction models. Four hundred forty-four national-team soccer players (under 15 [U15] to senior) were monitored during training sessions and matches using GPS. CK was measured every morning from whole blood. The players had 19.3 (18.1) individual GPS-CK pairs, resulting in a total of 8570 data points. Machine learning models were built using (1) GPS-derived or (2) FMP-based parameters or (3) the combination of the 2 to predict the following days' CK value. The performance of general and individual-specific prediction models was compared. The performance of the models was described by R2 and the root-mean-square error (RMSE, in units per liter for CK values). The FMP model (R2 = .60, RMSE = 144.6 U/L) performed similarly to the GPS-based model (R2 = .62, RMSE = 141.2 U/L) and the combination of the 2 (R2 = .62, RMSE = 140.3 U/L). The prediction power of the general model was better on average (R2 = .57 vs R2 = .37) and for 73% of the players than the individualized model. The results suggest that FMP-based CK-prediction models perform similarly to those based on GPS-derived metrics. General machine learning models' prediction power was higher than those of the individual-specific models. These findings can be used to monitor postmatch recovery strategies and to optimize weekly training periodization.

Identifiants

pubmed: 38917990
doi: 10.1123/ijspp.2024-0077
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

1-8

Auteurs

Gabor Schuth (G)

Department of Sport Medicine and Sport Science, Hungarian Football Federation, Budapest, Hungary.
Department of Health Sciences and Sport Medicine, Hungarian University of Sports Science, Budapest, Hungary.

György Szigeti (G)

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

Gergely Dobreff (G)

Department of Telecommunications and Media Informatics, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, Budapest, Hungary.

Alija Pašić (A)

Department of Telecommunications and Media Informatics, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, Budapest, Hungary.

Tim Gabbett (T)

Gabbett Performance Solutions, Brisbane, QLD, Australia.

Adam Szilas (A)

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

Gabor Pavlik (G)

Department of Health Sciences and Sport Medicine, Hungarian University of Sports Science, Budapest, Hungary.

Classifications MeSH