Authors
Susanne Jauhiainen, Jukka-Pekka Kauppi, Mari Leppänen, Kati Pasanen, Jari Parkkari, Tommi Vasankari, Pekka Kannus, Sami Äyrämö
Publication date
2021/2
Journal
International journal of sports medicine
Volume
42
Issue
02
Pages
175-182
Publisher
Georg Thieme Verlag KG
Description
The purpose of this article is to present how predictive machine learning methods can be utilized for detecting sport injury risk factors in a data-driven manner. The approach can be used for finding new hypotheses for risk factors and confirming the predictive power of previously recognized ones. We used three-dimensional motion analysis and physical data from 314 young basketball and floorball players (48.4% males, 15.72±1.79 yr, 173.34±9.14 cm, 64.65±10.4 kg). Both linear (L1-regularized logistic regression) and non-linear methods (random forest) were used to predict moderate and severe knee and ankle injuries (N=57) during three-year follow-up. Results were confirmed with permutation tests and predictive risk factors detected with Wilcoxon signed-rank-test (p<0.01). Random forest suggested twelve consistent injury predictors and logistic regression twenty. Ten of these were suggested in both models …
Total citations
20212022202320247161512
Scholar articles
S Jauhiainen, JP Kauppi, M Leppänen, K Pasanen… - International journal of sports medicine, 2021