2023
DOI: 10.3389/fphys.2023.1182755
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The impact of sport-specific physical fitness change patterns on lower limb non-contact injury risk in youth female basketball players: a pilot study based on field testing and machine learning

Abstract: Background: In recent years, identifying players with injury risk through physical fitness assessment has become a hot topic in sports science research. Although practitioners have conducted many studies on the relationship between physical fitness and the likelihood of injury, the relationship between the two remains indeterminate. Consequently, this study utilized machine learning to preliminary investigate the relationship between individual physical fitness tests and injury risk, aiming to identify whether… Show more

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“…Huang et al 23 elaborated physical education training program impact of a student's fitness related to injury risk in the basketball team of college was analyzed using linear discriminant analysis (LDA) as a main feature extraction technique. The prediction of fitness assessment of students' attributes on agility and speed was based on a cost-effective neural network approach with precision, recall, f1-score, and area under the curve was predicted as 63.6%, 87%, 79.8%, and 85.95.…”
Section: Related Work On Petcu Evaluation Using the Fuzzy System And Aimentioning
confidence: 99%
“…Huang et al 23 elaborated physical education training program impact of a student's fitness related to injury risk in the basketball team of college was analyzed using linear discriminant analysis (LDA) as a main feature extraction technique. The prediction of fitness assessment of students' attributes on agility and speed was based on a cost-effective neural network approach with precision, recall, f1-score, and area under the curve was predicted as 63.6%, 87%, 79.8%, and 85.95.…”
Section: Related Work On Petcu Evaluation Using the Fuzzy System And Aimentioning
confidence: 99%