Publications

Prediction of football injuries using GPS-based data in Iranian professional football players: a machine learning approach  (2025)

Authors:
Saberisani, Reza; Barati, Amir Hossein; Zarei, Mostafa; Santos, Paulo; Gorouhi, Armin; Ardigò, Luca Paolo; Nobari, Hadi
Title:
Prediction of football injuries using GPS-based data in Iranian professional football players: a machine learning approach
Year:
2025
Type of item:
Articolo in Rivista
Tipologia ANVUR:
Articolo su rivista
Language:
Inglese
Format:
Elettronico
Referee:
Name of journal:
FRONTIERS IN SPORTS AND ACTIVE LIVING
ISSN of journal:
2624-9367
N° Volume:
7
Page numbers:
1-9
Keyword:
GPS; football; injury prediction; machine learning; training load
Short description of contents:
Introduction: The study aims to assess and compare the predictive effectiveness of football-related injuries using external load data and a decision tree classification algorithm by unidimensional approach. Methods: The sample consisted of 25 players from one of the 16 teams participating in the Persian Gulf Pro League during the 2022--2023 season. Player injury data and raw GPS data from all training and competition sessions throughout the football league season were gathered (214 training sessions and 34 competition sessions). The acute-tochronic workload ratio was calculated separately for each variable using a ratio of 1:3 weeks. Finally, the decision tree algorithm with machine learning was utilised to assess the predictive power of injury occurrence based on the acute-to-chronic workload ratio. Results: The results showed that the variable of the number of decelerations had the highest predictive power compared to other variables [area under the curve (AUC) = 0.91, recall = 87.5%, precision = 58.3%, accuracy = 94.7%]. Conclusion: Although none of the selected external load variables in this study had high predictive power (AUC > 0.95), due to the high predictive power of injury of the number of deceleration variables compared with other variables, the necessity of attention and management of this variable as a risk factor for injury occurrence is essential for preventing future injuries.
Web page:
https://doi.org/10.3389/fspor.2025.1425180
Product ID:
144389
Handle IRIS:
11562/1155291
Last Modified:
April 25, 2025
Bibliographic citation:
Saberisani, Reza; Barati, Amir Hossein; Zarei, Mostafa; Santos, Paulo; Gorouhi, Armin; Ardigò, Luca Paolo; Nobari, Hadi, Prediction of football injuries using GPS-based data in Iranian professional football players: a machine learning approach «FRONTIERS IN SPORTS AND ACTIVE LIVING» , vol. 72025pp. 1-9

Consulta la scheda completa presente nel repository istituzionale della Ricerca di Ateneo IRIS

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