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Decoding the tackle: Using a Machine Learning approach to understand direct head contact events in Elite Women's Rugby

Kathryn Dane, E. Rushe, Will Connors, Stephen W. West, Sharief Hendricks, T. Laurent, Ciaran K. Simms, Fiona Wilson, Anthony Ventresque

Research output: Contribution to journalArticlepeer-review

Abstract

Concerns about the cumulative effects of head acceleration events in rugby are growing, but how tackle events lead to directhead contact in women's rugby remains underexplored. This cross‐sectional study aimed to develop and evaluate a machinelearning model to identify characteristics associated with direct head contact and incorrect tackler head placement in elitewomen's rugby. Match situational and precontact technical characteristics (n = 31) from 1500 randomly selected tackle eventswere coded visually and retrospectively analyzed from the 2022–23 Women's Six Nations Championship. A machine learningmodel was developed and evaluated using a grid search with 5‐fold cross‐validations and F1 scores (i.e., a measure of predictiveperformance). The top modifiable characteristics associated with the target outcomes across 100 test sets were identified bymutual importance and decision tree modeling. The top modifiable characteristics linked to direct head contact to the tacklerwere incorrect head placement, coming to balance, and foot placement. Tackle direction, point of contact on the tackler, andmultiplayer tackles were key characteristics for incorrect tackler head placement. Tackler drop height, front/oblique tackledirection, and multiplayer tackles were strongly associated with direct head contact to the ball‐carrier. Incorrect tackler headplacement, the direction of tackle, tackler drop height, and multiplayer tackles are key characteristics in direct head contactevents in elite women's rugby. Addressing these characteristics should be prioritized in contact training practices, educationresources, and law enforcement to enhance player safety and direct head contact events in the women's game
Original languageEnglish
Article numbere70018
JournalInjury Prevention
Volume25
Issue number8
Early online date3 Aug 2025
DOIs
Publication statusPublished - 31 Aug 2025

Bibliographical note

Publisher Copyright:
© 2025 The Author(s). European Journal of Sport Science published by Wiley-VCH GmbH on behalf of European College of Sport Science.

Data Availability Statement

The network and source code for the pre processing steps and data analysis pipeline performed for the study are available at https://github.com/EllenRushe/DecodingTheTackle. The original data supporting the findings of this study are available from the corresponding author upon reasonable request.

Funding

A special thanks to Oliver Bishop, Richie Gray, and Abby Dowe for their contributions to the study. The authors would like to acknowledge the support and contribution of Vinny Hammond and Cian O'Brien from the IRFU for their expertise and guidance. K.D. received funding from the Irish Research Council, Ireland (Grant No. GOIPG/2020/1220). E.R., W.C., A.V., T.L. are funded by the Science Foundation Ireland Grant 13/RC/2094_P2 to Lero\u2014the Research Ireland Research Center for Software ( www.lero.ie ). Open access funding provided by IReL. Funding:

FundersFunder number
Irish Rugby Football Union
Irish Research CouncilGOIPG/2020/1220
Science Foundation Ireland13/RC/2094_P2

    Keywords

    • contact sport
    • injury prevention
    • sportswomen
    • technique

    ASJC Scopus subject areas

    • Physical Therapy, Sports Therapy and Rehabilitation
    • Orthopedics and Sports Medicine

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