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
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