循环神经网络预测自行车踏板力和下肢动力学的有效性

IF 2.4 3区 医学 Q3 BIOPHYSICS
Juan Cordero-Sánchez , Rodrigo Bini , Gil Serrancolí
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引用次数: 0

摘要

动态变量有助于理解蹬车的机制,并有助于预防伤害。测量踏板力和关节力矩和功率的成本很高,可以通过训练后的人工神经网络(ANN)从运动学角度预测力来降低成本。因此,本研究旨在训练和验证递归神经网络,以从下肢运动学中预测3D踏板力、下肢关节力矩和功率。17名骑自行车者在一个实验室中记录的工作力计蹬车数据被用来训练人工神经网络,其中各种工作力计的功率输出和节奏被组合在一起。使用一个包含10个骑自行车者的不同数据集来测试ANŃs的性能。通过统计参数映射(SPM)来探索整个踏板周期中测量和预测的动力学变量之间的显著相关性。平均相关值为0.79 ~ 0.96,所有变量在峰值绝对值处均表现出显著正相关(p <;0.05),除了前后(p = 0.28)和中外侧(p = 0.51)踏板力和膝关节屈曲力(p = 0.33)。神经网络在矢状面的最大预测误差分别为12.1%、17.2%和9.4%,在非矢状面的最大预测误差分别为13.0%、28.9%和24.0%。因此,人工神经网络在评估日之间的变异性所期望的误差范围内产生循环中的动态数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validity of recurrent neural networks to predict pedal forces and lower limb kinetics in cycling
Dynamic variables contribute to understand the mechanics of pedalling and can assist with injury prevention. Measuring pedal forces and joint moments and powers has a high cost, which can be mitigated by using trained artificial neural networks (ANN) to predict forces from kinematics. Thus, this study aimed at training and validating recurrent ANN to predict 3D pedal forces, lower limb joint moments and powers from lower limb kinematics. Ergometer pedalling data from seventeen cyclists recorded in a single laboratory session were used to train the ANN, where various ergometer power outputs and cadences were combined. A different dataset with ten cyclists was utilized to test the ANŃs performance. Statistical Parametric Mapping (SPM) was performed to explore significant correlations between measured and predicted kinetic variables throughout the pedal cycle. Mean correlation values ranged from 0.79 to 0.96 and all variables exhibited significant positive correlations at their peak absolute values (p < 0.05), except for the anteroposterior (p = 0.28) and mediolateral (p = 0.51) pedal forces and the knee flexion power (p = 0.33). The maximum prediction errors of the ANN in the sagittal plane were 12.1 % for the pedal forces, 17.2 % for the net joint moments and 9.4 % for the joint powers, while for non-sagittal plane were 13.0 %, 28.9 % and 24.0 %, respectively. Thus, the ANN produces kinetic data in cycling within the errors expected from the variability between assessment days.
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来源期刊
Journal of biomechanics
Journal of biomechanics 生物-工程:生物医学
CiteScore
5.10
自引率
4.20%
发文量
345
审稿时长
1 months
期刊介绍: The Journal of Biomechanics publishes reports of original and substantial findings using the principles of mechanics to explore biological problems. Analytical, as well as experimental papers may be submitted, and the journal accepts original articles, surveys and perspective articles (usually by Editorial invitation only), book reviews and letters to the Editor. The criteria for acceptance of manuscripts include excellence, novelty, significance, clarity, conciseness and interest to the readership. Papers published in the journal may cover a wide range of topics in biomechanics, including, but not limited to: -Fundamental Topics - Biomechanics of the musculoskeletal, cardiovascular, and respiratory systems, mechanics of hard and soft tissues, biofluid mechanics, mechanics of prostheses and implant-tissue interfaces, mechanics of cells. -Cardiovascular and Respiratory Biomechanics - Mechanics of blood-flow, air-flow, mechanics of the soft tissues, flow-tissue or flow-prosthesis interactions. -Cell Biomechanics - Biomechanic analyses of cells, membranes and sub-cellular structures; the relationship of the mechanical environment to cell and tissue response. -Dental Biomechanics - Design and analysis of dental tissues and prostheses, mechanics of chewing. -Functional Tissue Engineering - The role of biomechanical factors in engineered tissue replacements and regenerative medicine. -Injury Biomechanics - Mechanics of impact and trauma, dynamics of man-machine interaction. -Molecular Biomechanics - Mechanical analyses of biomolecules. -Orthopedic Biomechanics - Mechanics of fracture and fracture fixation, mechanics of implants and implant fixation, mechanics of bones and joints, wear of natural and artificial joints. -Rehabilitation Biomechanics - Analyses of gait, mechanics of prosthetics and orthotics. -Sports Biomechanics - Mechanical analyses of sports performance.
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