Lower limb injury risk assessment was proposed, based on isokinetic examination that is a part of standard athlete’s biomechanical evaluation performed mainly twice a year. Information about non-contact knee injury (or lack of the injury) sustained within twelve months after isokinetic test, confirmed in USG were verified. Three the most common types of football injuries were taken into consideration: anterior cruciate ligament (ACL) rupture, hamstring and quadriceps muscles injuries. 22 parameters, obtained from isokinetic tests were divided into 4 groups and used as input parameters of five feedforward artificial neural networks (ANNs). The 5th group consisted of all considered parameters. The networks were trained with the use of Levenberg-Marquardt backpropagation algorithm to return value close to 1 for the sets of parameters corresponding injury event and close to 0 for parameters with no injury recorded within 6 - 12 months after isokinetic test. Results of this study shows that ANN might be useful tools, which simplify process of simultaneous interpretation of many numerical parameters, but the most important factor that significantly influence the results is database used for ANN training.
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5 January 2018
COMPUTER METHODS IN MECHANICS (CMM2017): Proceedings of the 22nd International Conference on Computer Methods in Mechanics
13–16 September 2017
Lublin, Poland
Research Article|
January 05 2018
Artificial neural networks in knee injury risk evaluation among professional football players
Michałowska Martyna;
1
Institute of Applied Mechanics, Faculty of Mechanical Engineering and Management, Poznan University of Technology
, Jana Pawła II 24, 60-965 Poznań, Poland
2
Rehasport Clinic sp. z o.o
., Górecka 30, 60-201 Poznań, Poland
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Walczak Tomasz;
1
Institute of Applied Mechanics, Faculty of Mechanical Engineering and Management, Poznan University of Technology
, Jana Pawła II 24, 60-965 Poznań, Poland
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Grabski Jakub Krzysztof;
1
Institute of Applied Mechanics, Faculty of Mechanical Engineering and Management, Poznan University of Technology
, Jana Pawła II 24, 60-965 Poznań, Poland
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Grygorowicz Monika
2
Rehasport Clinic sp. z o.o
., Górecka 30, 60-201 Poznań, Poland
3
Department of Spondyloorthopaedics and Biomechanics of the Spine, Poznań University of Medical Sciences
, 28 Czerwca 1956 135/147, 61-545 Poznań, Poland
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Michałowska Martyna
1,2
Walczak Tomasz
1
Grabski Jakub Krzysztof
1
Grygorowicz Monika
2,3
1
Institute of Applied Mechanics, Faculty of Mechanical Engineering and Management, Poznan University of Technology
, Jana Pawła II 24, 60-965 Poznań, Poland
2
Rehasport Clinic sp. z o.o
., Górecka 30, 60-201 Poznań, Poland
3
Department of Spondyloorthopaedics and Biomechanics of the Spine, Poznań University of Medical Sciences
, 28 Czerwca 1956 135/147, 61-545 Poznań, Poland
a)
Corresponding author: [email protected]
AIP Conf. Proc. 1922, 070002 (2018)
Citation
Michałowska Martyna, Walczak Tomasz, Grabski Jakub Krzysztof, Grygorowicz Monika; Artificial neural networks in knee injury risk evaluation among professional football players. AIP Conf. Proc. 5 January 2018; 1922 (1): 070002. https://doi.org/10.1063/1.5019069
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