Litcius/Paper detail

A Data Mining Approach to Predict Non-Contact Injuries in Young Soccer Players

Mauro Mandorino, António J. Figueiredo, Gianluca Cima, Antonio Tessitore

2021International Journal of Computer Science in Sport21 citationsDOIOpen Access PDF

Abstract

Abstract Predicting and avoiding an injury is a challenging task. By exploiting data mining techniques, this paper aims to identify existing relationships between modifiable and non-modifiable risk factors, with the final goal of predicting non-contact injuries. Twenty-three young soccer players were monitored during an entire season, with a total of fifty-seven non-contact injuries identified. Anthropometric data were collected, and the maturity offset was calculated for each player. To quantify internal training/match load and recovery status of the players, we daily employed the session-RPE method and the total quality recovery (TQR) scale. Cumulative workloads and the acute: chronic workload ratio (ACWR) were calculated. To explore the relationship between the various risk factors and the onset of non-contact injuries, we performed a classification tree analysis. The classification tree model exhibited an acceptable discrimination (AUC=0.76), after receiver operating characteristic curve (ROC) analysis. A low state of recovery, a rapid increase in the training load, cumulative workload, and maturity offset were recognized by the data mining algorithm as the most important injury risk factors.

Topics & Concepts

WorkloadReceiver operating characteristicOffset (computer science)Computer scienceDecision treeData miningMachine learningProgramming languageOperating systemSports injuries and preventionSports Performance and TrainingCardiovascular Effects of Exercise
A Data Mining Approach to Predict Non-Contact Injuries in Young Soccer Players | Litcius