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Recurrent Neural Networks model for injury prevention within a professional rugby union club: a proof of concept over one season

Article dans une revue avec comité de lecture
Auteur
DUFFULER, Maxence
1001017 Institut de Biomécanique Humaine Georges Charpak [IBHGC]
ccBOURGAIN, Maxime
1001017 Institut de Biomécanique Humaine Georges Charpak [IBHGC]
1174926 EPF-Ecole d'Ingénieurs Cachan
ccHADDAD, Zehira
HERAUD, Renaud
ccBLANCHARD, Sylvain
581100 Laboratoire de Biomécanique Appliquée [LBA UMR T24]
ccROUCH, Philippe
1001017 Institut de Biomécanique Humaine Georges Charpak [IBHGC]

URI
http://hdl.handle.net/10985/26963
DOI
10.1016/j.clinbiomech.2025.106600
Date
2025-06
Journal
Clinical Biomechanics

Résumé

Background In professional rugby, injury prevention and player availability are major challenges. Sports analytics use data from trainings and matches to address these issues. This study leveraged comprehensive daily data from a professional rugby club to predict players' readiness for training. Using this metric helped assess its effectiveness in predicting intrinsic injuries and improving injury prevention strategies. Methods Models including logistic regression, decision trees, and Long Short-Term Memory-based neural networks, were evaluated for their predictive accuracy and ability to discern patterns indicative of injury risks or readiness for physical activities. Findings The study demonstrated that long-short term memory and convolutional one-dimension models outperform traditional machine learning methods in analyzing players' physical conditions. This approach may support earlier identification of injury risks and inform workload management. Using model evaluation and interpretability techniques, including Local Interpretable Model-Agnostic Explanations (LIME) module, the study provided a framework for sports scientists, coaches, and medical staff to mitigate injury risks and optimize training sessions. Interpretation As a preliminary exploration, this study paves the way for further research into the integration of machine learning and neural networks in sports science, promising transformative impacts on injury prevention strategies in rugby.

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Nom:
IBHGC_CB_2025_DUFFULER.pdf
Taille:
1.082Mo
Format:
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Fin d'embargo:
2025-12-20
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  • Institut de Biomécanique Humaine Georges Charpak (IBHGC)

Documents liés

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  • Recurrent Neural Networks model for injury prevention within a professional rugby union club: a proof of concept over one season 
    Article dans une revue avec comité de lecture
    DUFFULER, Maxence; ccBOURGAIN, Maxime; ccHADDAD, Zehira; HERAUD, Renaud; ccBLANCHARD, Sylvain; ccROUCH, Philippe (Elsevier BV, 2025-06)
    Background In professional rugby, injury prevention and player availability are major challenges. Sports analytics use data from trainings and matches to address these issues. This study leveraged comprehensive daily data ...
  • Geometrical comparison between instrumented and non-instrumented mouthguards for rugby: A pilot study 
    Article dans une revue avec comité de lecture
    ccBOURGAIN, Maxime; ccVALDES-TAMAYO, Laura; GEY, Louis; CHABRE, Claude; ccLAPORTE, Sébastien; ccRIGNON-BRET, Christophe; ccTAPIE, Laurent; ccPOISSON, PHILIPPE; ccROUCH, Philippe; ccBLANCHARD, Sylvain (2025-09-26)
    Rugby is a sport with a high injury rate. Much has been done to make the sport safer, particularly in terms of limiting and identifying concussions. Recently, instrumented mouthguards have been developed and used to measure ...
  • Does Trunk Self-Elongation Instruction Lead to Changes in Effective Trunk Height and Spino-Pelvic Parameters? A Radiographic Analysis 
    Article dans une revue avec comité de lecture
    PRUM, Grégoire; ccEYSSARTIER, Camille; BOURGAIN, Maxime; ccROUCH, Philippe; BILLARD, Pierre; ccTHOREUX, Patricia; ccSAURET, Christophe (MDPI AG, 2024-12)
    Background/Objectives: The aim of this study was to evaluate changes in trunk height and variations in spino-pelvic parameters during trunk self-elongation. Two populations were studied: non-athletes and gymnasts, who ...
  • Effect of shoulder model complexity in upper-body kinematics analysis of the golf swing 
    Article dans une revue avec comité de lecture
    BOURGAIN, Maxime; HYBOIS, Samuel; THOREUX, Patricia; ROUILLON, Olivier; SAURET, Christophe; ccROUCH, Philippe (Elsevier, 2018)
    The golf swing is a complex full body movement during which the spine and shoulders are highly involved. In order to determine shoulder kinematics during this movement, multibody kinematics optimization (MKO) can be ...
  • Biomechanical analysis of the golf swing: methodological effect of angular velocity component on the identification of the kinematic sequence 
    Article dans une revue avec comité de lecture
    MARSAN, Thibault; THOREUX, Patricia; BOURGAIN, Maxime; ROUILLON, Olivier; SAURET, Christophe; ccROUCH, Philippe (Wroclaw University of Technology, 2019)
    The golf swing is a complex whole-body motion for which a proximal-to-distal transfer of the segmental angular velocitiesfrom the pelvis to the club is believed to be optimal for maximizing the club head linear velocity. ...

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