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Image_3_Machine Learning to Predict Lower Extremity Musculoskeletal Injury Risk in Student Athletes.PDF

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posted on 2020-11-19, 05:00 authored by Maria Henriquez, Jacob Sumner, Mallory Faherty, Timothy Sell, Brinnae Bent
<p>Injury rates in student athletes are high and often unpredictable. Injury risk factors are not agreed upon and often not validated. Here, we present a random-forest machine learning methodology for identifying the most significant injury risk factors and develop a model of lower extremity musculoskeletal injury risk in student athletes with physical performance metrics spanning joint strength measured with force transducers, postural stability measured using a force plate, and flexibility, measured with a goniometer, combined with previous injury metrics and athlete demographics. We tested our model in a population of 122 student athletes with performance metrics for the lower extremity musculoskeletal system and achieved an injury risk accuracy of 79% and identified significant injury risk factors, that could be used to increase accuracy of injury risk assessments, implement timely interventions, and decrease the number of career-ending or chronic injuries among student athletes.</p>

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