Machine Learning Applications to Sports Injury: A Review

Conference proceedings article


Authors/Editors


Strategic Research Themes


Publication Details

Author listHanna Sigurdson and Jonathan H. Chan

Publication year2021

Volume number1

Start page157

End page168

Number of pages12

URLhttps://www.scitepress.org/Papers/2021/107171/

LanguagesEnglish-United States (EN-US)


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Abstract

As sports injuries increase in frequency in adolescents, and injuries in professional athletes create a detrimental impact on the sports industry, research surrounding preventing sports injuries becomes more
prevalent. The mechanism for sports injury is well defined and includes intrinsic (age, psychology etc.) and
extrinsic risk factors (weather, training load etc.), and the inciting event. With the rise of machine learning (ML), a variety of ML techniques have been applied to various sports injury aspects. The purpose of this work is to assess the current applications of ML to sports injury and identify areas of growth by a systematic analysis of applications to each injury element: intrinsic factors, extrinsic factors, and the inciting  event.  Current underdeveloped areas are identified as: psychological effect, use of extrinsic factors, analysis of the inciting event, and application of the action recognition ability of videos and wearable technology.  Future technical applications in these underdeveloped areas should be undergone to expand on and improve sports injury prevention technology.


Keywords

Artificial IntelligenceExtrinsic FactorsIntrinsic FactorsLiterature ReviewSports InjurySports Injury Risk FactorsSports Psychology


Last updated on 2023-18-10 at 07:44