Literature DB >> 32920800

New Machine Learning Approach for Detection of Injury Risk Factors in Young Team Sport Athletes.

Susanne Jauhiainen1, Jukka-Pekka Kauppi1, Mari Leppänen2, Kati Pasanen2,3,4,5, Jari Parkkari2,6, Tommi Vasankari2, Pekka Kannus2,6, Sami Äyrämö1.   

Abstract

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; sex, body mass index, hamstring flexibility, knee joint laxity, medial knee displacement, height, ankle plantar flexion at initial contact, leg press one-repetition max, and knee valgus at initial contact. Cross-validated areas under receiver operating characteristic curve were 0.65 (logistic regression) and 0.63 (random forest). The results highlight the difficulty of predicting future injuries, but also show that even with models having relatively low predictive power, certain predictive injury risk factors can be consistently detected. Thieme. All rights reserved.

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Year:  2020        PMID: 32920800     DOI: 10.1055/a-1231-5304

Source DB:  PubMed          Journal:  Int J Sports Med        ISSN: 0172-4622            Impact factor:   3.118


  6 in total

1.  Impact of Gender and Feature Set on Machine-Learning-Based Prediction of Lower-Limb Overuse Injuries Using a Single Trunk-Mounted Accelerometer.

Authors:  Sieglinde Bogaert; Jesse Davis; Sam Van Rossom; Benedicte Vanwanseele
Journal:  Sensors (Basel)       Date:  2022-04-08       Impact factor: 3.847

Review 2.  Safeguarding Athletes Against Head Injuries Through Advances in Technology: A Scoping Review of the Uses of Machine Learning in the Management of Sports-Related Concussion.

Authors:  Anne Tjønndal; Stian Røsten
Journal:  Front Sports Act Living       Date:  2022-04-20

3.  Machine Learning-Based Performance Comparison to Diagnose Anterior Cruciate Ligament Tears.

Authors:  Mazhar Javed Awan; Mohd Shafry Mohd Rahim; Naomie Salim; Amjad Rehman; Haitham Nobanee
Journal:  J Healthc Eng       Date:  2022-04-11       Impact factor: 3.822

4.  Machine Learning for Predicting Lower Extremity Muscle Strain in National Basketball Association Athletes.

Authors:  Yining Lu; Ayoosh Pareek; Ophelie Z Lavoie-Gagne; Enrico M Forlenza; Bhavik H Patel; Anna K Reinholz; Brian Forsythe; Christopher L Camp
Journal:  Orthop J Sports Med       Date:  2022-07-26

5.  Predicting ACL Injury Using Machine Learning on Data From an Extensive Screening Test Battery of 880 Female Elite Athletes.

Authors:  Susanne Jauhiainen; Jukka-Pekka Kauppi; Tron Krosshaug; Roald Bahr; Julia Bartsch; Sami Äyrämö
Journal:  Am J Sports Med       Date:  2022-08-19       Impact factor: 7.010

6.  Machine-learned-based prediction of lower extremity overuse injuries using pressure plates.

Authors:  Loren Nuyts; Arne De Brabandere; Sam Van Rossom; Jesse Davis; Benedicte Vanwanseele
Journal:  Front Bioeng Biotechnol       Date:  2022-09-02
  6 in total

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