Literature DB >> 32079917

A Machine Learning Approach to Assess Injury Risk in Elite Youth Football Players.

Nikki Rommers, Roland Rössler, Evert Verhagen, Florian Vandecasteele1, Steven Verstockt1, Roel Vaeyens2, Matthieu Lenoir2, Eva D'Hondt3, Erik Witvrouw4.   

Abstract

PURPOSE: To assess injury risk in elite-level youth football (soccer) players based on anthropometric, motor coordination and physical performance measures with a machine learning model.
METHODS: A total of 734 players in the U10 to U15 age categories (mean age, 11.7 ± 1.7 yr) from seven Belgian youth academies were prospectively followed during one season. Football exposure and occurring injuries were monitored continuously by the academies' coaching and medical staff, respectively. Preseason anthropometric measurements (height, weight, and sitting height) were taken and test batteries to assess motor coordination and physical fitness (strength, flexibility, speed, agility, and endurance) were performed. Extreme gradient boosting algorithms (XGBoost) were used to predict injury based on the preseason test results. Subsequently, the same approach was used to classify injuries as either overuse or acute.
RESULTS: During the season, half of the players (n = 368) sustained at least one injury. Of the first occurring injuries, 173 were identified as overuse and 195 as acute injuries. The machine learning algorithm was able to identify the injured players in the hold-out test sample with 85% precision, 85% recall (sensitivity) and 85% accuracy (f1 score). Furthermore, injuries could be classified as overuse or acute with 78% precision, 78% recall, and 78% accuracy.
CONCLUSIONS: Our machine learning algorithm was able to predict injury and to distinguish overuse from acute injuries with reasonably high accuracy based on preseason measures. Hence, it is a promising approach to assess injury risk among elite-level youth football players. This new knowledge could be applied in the development and improvement of injury risk management strategies to identify youth players with the highest injury risk.

Entities:  

Mesh:

Year:  2020        PMID: 32079917     DOI: 10.1249/MSS.0000000000002305

Source DB:  PubMed          Journal:  Med Sci Sports Exerc        ISSN: 0195-9131            Impact factor:   5.411


  11 in total

1.  Machine Learning for Understanding and Predicting Injuries in Football.

Authors:  Aritra Majumdar; Rashid Bakirov; Dan Hodges; Suzanne Scott; Tim Rees
Journal:  Sports Med Open       Date:  2022-06-07

2.  Machine Learning Outperforms Regression Analysis to Predict Next-Season Major League Baseball Player Injuries: Epidemiology and Validation of 13,982 Player-Years From Performance and Injury Profile Trends, 2000-2017.

Authors:  Jaret M Karnuta; Bryan C Luu; Heather S Haeberle; Paul M Saluan; Salvatore J Frangiamore; Kim L Stearns; Lutul D Farrow; Benedict U Nwachukwu; Nikhil N Verma; Eric C Makhni; Mark S Schickendantz; Prem N Ramkumar
Journal:  Orthop J Sports Med       Date:  2020-11-11

Review 3.  Machine learning methods in sport injury prediction and prevention: a systematic review.

Authors:  Hans Van Eetvelde; Luciana D Mendonça; Christophe Ley; Romain Seil; Thomas Tischer
Journal:  J Exp Orthop       Date:  2021-04-14

4.  Machine Learning to Predict Lower Extremity Musculoskeletal Injury Risk in Student Athletes.

Authors:  Maria Henriquez; Jacob Sumner; Mallory Faherty; Timothy Sell; Brinnae Bent
Journal:  Front Sports Act Living       Date:  2020-11-19

Review 5.  Exercise-Based Injury Prevention in High-Level and Professional Athletes: Narrative Review and Proposed Standard Operating Procedure for Future Lockdown-Like Contexts After COVID-19.

Authors:  Géraldine Martens; François Delvaux; Bénédicte Forthomme; Jean-François Kaux; Axel Urhausen; François Bieuzen; Suzanne Leclerc; Laurent Winkler; Franck Brocherie; Mathieu Nedelec; Antonio J Morales-Artacho; Alexis Ruffault; Anne-Claire Macquet; Gaël Guilhem; Didier Hannouche; Philippe M Tscholl; Romain Seil; Pascal Edouard; Jean-Louis Croisier
Journal:  Front Sports Act Living       Date:  2021-12-17

6.  Impact of Gender and Feature Set on Machine-Learning-Based Prediction of Lower-Limb Overuse Injuries Using a Single Trunk-Mounted Accelerometer.

Authors:  Sieglinde Bogaert; Jesse Davis; Sam Van Rossom; Benedicte Vanwanseele
Journal:  Sensors (Basel)       Date:  2022-04-08       Impact factor: 3.847

7.  Monitoring Variables Influence on Random Forest Models to Forecast Injuries in Short-Track Speed Skating.

Authors:  Jérémy Briand; Simon Deguire; Sylvain Gaudet; François Bieuzen
Journal:  Front Sports Act Living       Date:  2022-07-14

8.  Predicting ACL Injury Using Machine Learning on Data From an Extensive Screening Test Battery of 880 Female Elite Athletes.

Authors:  Susanne Jauhiainen; Jukka-Pekka Kauppi; Tron Krosshaug; Roald Bahr; Julia Bartsch; Sami Äyrämö
Journal:  Am J Sports Med       Date:  2022-08-19       Impact factor: 7.010

9.  Machine-learned-based prediction of lower extremity overuse injuries using pressure plates.

Authors:  Loren Nuyts; Arne De Brabandere; Sam Van Rossom; Jesse Davis; Benedicte Vanwanseele
Journal:  Front Bioeng Biotechnol       Date:  2022-09-02

10.  Predictive Analytic Techniques to Identify Hidden Relationships between Training Load, Fatigue and Muscle Strains in Young Soccer Players.

Authors:  Mauro Mandorino; António J Figueiredo; Gianluca Cima; Antonio Tessitore
Journal:  Sports (Basel)       Date:  2021-12-24
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