Predictive modelling of football injuries
Stylianos Kampakis

TL;DR
This thesis explores predictive models for football injuries using machine learning on injury records, exposure data, and GPS measurements, aiming to improve injury prediction and prevention in professional football.
Contribution
It introduces novel predictive modeling approaches for football injuries, integrating injury records, exposure data, and GPS metrics, with collaborative validation from professional clubs.
Findings
Machine learning models can predict injury recovery times with improved accuracy.
Exposure data correlates with injury risk, enabling injury forecasting based on training and match hours.
GPS data can identify fatigue and overtraining indicators linked to injury occurrence.
Abstract
The goal of this thesis is to investigate the potential of predictive modelling for football injuries. This work was conducted in close collaboration with Tottenham Hotspurs FC (THFC), the PGA European tour and the participation of Wolverhampton Wanderers (WW). Three investigations were conducted: 1. Predicting the recovery time of football injuries using the UEFA injury recordings: The UEFA recordings is a common standard for recording injuries in professional football. For this investigation, three datasets of UEFA injury recordings were available. Different machine learning algorithms were used in order to build a predictive model. The performance of the machine learning models is then improved by using feature selection conducted through correlation-based subset feature selection and random forests. 2. Predicting injuries in professional football using exposure records: The…
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Taxonomy
TopicsSports Performance and Training · Anomaly Detection Techniques and Applications · Sports Analytics and Performance
