Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer
The large amount of features recorded from GPS and inertial sensors (external load) and well-being questionnaires (internal load) can be used together in a multi-dimensional non-linear machine learning based model for a better prediction of non-contact injuries. In this study we put forward the main...
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doaj-f00348169e404c149e30be4e9c071ef62020-11-25T01:28:18ZengMDPI AGApplied Sciences2076-34172020-07-01105261526110.3390/app10155261Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in SoccerEmmanuel Vallance0Nicolas Sutton-Charani1Abdelhak Imoussaten2Jacky Montmain3Stéphane Perrey4EuroMov Digital Health in Motion, University Montpellier, IMT Mines Ales, 34090 Montpellier, France <email>emmanuel.vallance@umontpellier.fr</email> (E.V.)EuroMov Digital Health in Motion, University Montpellier, IMT Mines Ales, 34090 Montpellier, France <email>emmanuel.vallance@umontpellier.fr</email> (E.V.)EuroMov Digital Health in Motion, University Montpellier, IMT Mines Ales, 34090 Montpellier, France <email>emmanuel.vallance@umontpellier.fr</email> (E.V.)EuroMov Digital Health in Motion, University Montpellier, IMT Mines Ales, 34090 Montpellier, France <email>emmanuel.vallance@umontpellier.fr</email> (E.V.)EuroMov Digital Health in Motion, University Montpellier, IMT Mines Ales, 34090 Montpellier, France <email>emmanuel.vallance@umontpellier.fr</email> (E.V.)The large amount of features recorded from GPS and inertial sensors (external load) and well-being questionnaires (internal load) can be used together in a multi-dimensional non-linear machine learning based model for a better prediction of non-contact injuries. In this study we put forward the main hypothesis that the use of such models would be able to inform better about injury risks by considering the evolution of both internal and external loads over two horizons (one week and one month). Predictive models were trained with data collected by both GPS and subjective questionnaires and injury data from 40 elite male soccer players over one season. Various classification machine-learning algorithms that performed best on external and internal loads features were compared using standard performance metrics such as accuracy, precision, recall and the area under the receiver operator characteristic curve. In particular, tree-based algorithms based on non-linear models with an important interpretation aspect were privileged as they can help to understand internal and external load features impact on injury risk. For 1-week injury prediction, internal load features data were more accurate than external load features while for 1-month injury prediction, the best performances of classifiers were reached by combining internal and external load features.https://www.mdpi.com/2076-3417/10/15/5261injury predictiontraining load monitoringnon-linear machine learningwell-being questionnairesone-month and one-week time horizonssport science |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Emmanuel Vallance Nicolas Sutton-Charani Abdelhak Imoussaten Jacky Montmain Stéphane Perrey |
spellingShingle |
Emmanuel Vallance Nicolas Sutton-Charani Abdelhak Imoussaten Jacky Montmain Stéphane Perrey Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer Applied Sciences injury prediction training load monitoring non-linear machine learning well-being questionnaires one-month and one-week time horizons sport science |
author_facet |
Emmanuel Vallance Nicolas Sutton-Charani Abdelhak Imoussaten Jacky Montmain Stéphane Perrey |
author_sort |
Emmanuel Vallance |
title |
Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer |
title_short |
Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer |
title_full |
Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer |
title_fullStr |
Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer |
title_full_unstemmed |
Combining Internal- and External-Training-Loads to Predict Non-Contact Injuries in Soccer |
title_sort |
combining internal- and external-training-loads to predict non-contact injuries in soccer |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2020-07-01 |
description |
The large amount of features recorded from GPS and inertial sensors (external load) and well-being questionnaires (internal load) can be used together in a multi-dimensional non-linear machine learning based model for a better prediction of non-contact injuries. In this study we put forward the main hypothesis that the use of such models would be able to inform better about injury risks by considering the evolution of both internal and external loads over two horizons (one week and one month). Predictive models were trained with data collected by both GPS and subjective questionnaires and injury data from 40 elite male soccer players over one season. Various classification machine-learning algorithms that performed best on external and internal loads features were compared using standard performance metrics such as accuracy, precision, recall and the area under the receiver operator characteristic curve. In particular, tree-based algorithms based on non-linear models with an important interpretation aspect were privileged as they can help to understand internal and external load features impact on injury risk. For 1-week injury prediction, internal load features data were more accurate than external load features while for 1-month injury prediction, the best performances of classifiers were reached by combining internal and external load features. |
topic |
injury prediction training load monitoring non-linear machine learning well-being questionnaires one-month and one-week time horizons sport science |
url |
https://www.mdpi.com/2076-3417/10/15/5261 |
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