Machine learning applications in spine biomechanics
Type de document
Études primaires
Année de publication
2024
Langue
Anglais
Titre de la revue
Journal of Biomechanics
Résumé
Spine biomechanics is at a transformation with the advent and integration of machine learning and computer vision technologies. These novel techniques facilitate the estimation of 3D body shapes, anthropometrics, and kinematics from as simple as a single-camera image, making them more accessible and practical for a diverse range of applications. This study introduces a framework that merges these methodologies with traditional musculoskeletal modeling, enabling comprehensive analysis of spinal biomechanics during complex activities from a single camera. Additionally, we aim to evaluate their performance and limitations in spine biomechanics applications. The real-world applications explored in this study include assessment in workplace lifting, evaluation of whiplash injuries in car accidents, and biomechanical analysis in professional sports. Our results demonstrate potential and limitations of various algorithms in estimating body shape, kinematics, and conducting in-field biomechanical analyses. In industrial settings, the potential to utilize these new technologies for biomechanical risk assessments offers a pathway for preventive measures against back injuries. In sports activities, the proposed framework provides new opportunities for performance optimization, injury prevention, and rehabilitation. The application in forensic domain further underscores the wide-reaching implications of this technology. While certain limitations were identified, particularly in accuracy of predictions, complex interactions, and external load estimation, this study demonstrates their potential for advancement in spine biomechanics, heralding an optimistic future in both research and practical applications. © 2024 Elsevier Ltd
Mots-clés
Mécanique humaine, Body mechanics, Colonne vertébrale, Spinal column, Technologie, Technology, Affection dorsale, Back disorder
Numéro de projet IRSST
n/a
Citation recommandée
Ghezelbash, F., Hossein Eskandari, A., Robert-Lachaine, X., Cao, S., Pesteie, M., Qiao, Z., . . . Larivière, C. (2024). Machine learning applications in spine biomechanics. Journal of Biomechanics, 166, article 111967. https://doi.org/10.1016/j.jbiomech.2024.111967