行走时下肢肌肉活动的神经网络估计方法

M. Khant, Daniel Ts Lee, D. Gouwanda, A. Gopalai, K. Lim, Chee Choong Foong
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引用次数: 0

摘要

步态分析是对人体运动的研究。它在步态异常的诊断和康复、与衰老相关的生理变化的研究以及损伤的治疗中起着至关重要的作用。肌肉活动是控制步行过程中关节功能的重要步态参数,为步态质量提供了有价值的信息。然而,目前测量肌肉活动的技术,如肌电图(EMG)和肌肉骨骼建模工具,都有缺点。本研究开发了一种人工神经网络(ANN)方法,利用骨盆、髋关节、膝关节和踝关节角度来估计下肢肌肉的八种活动。它使用在线步态数据库,该数据库包含运动学和动力学步态参数以及下肢肌电图。对四种训练算法进行了探索和研究。尽管实际和估计的肌肉活动之间存在显著差异,例如臀大肌和股二头肌,但结果表明,所提出的方法在确定步行过程中的肌肉行为方面是可行的。该研究还显示了机器学习的潜力,以弥补模态的缺乏,并提供了对步态中肌肉动态的洞察。临床相关性-步态分析在临床和康复设置中很重要。所提出的方法有可能减少对肌电图的依赖,并且可以作为诊断、治疗和恢复步态异常的肌肉骨骼建模工具的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Network Approach to Estimate Lower Extremity Muscle Activity during Walking
Gait analysis is the study of human locomotion. It plays an essential role in the diagnosis and rehabilitation of gait abnormalities, the study of physiological changes associated with ageing, and the treatment of injuries. Muscle activity is an important gait parameter that controls joint function during walking and provides valuable information about the gait quality. However, current techniques to measure muscle activity, such as electromyogram (EMG) and musculoskeletal modelling tools, have drawbacks. This study develops an artificial neural network (ANN) method to estimate eight lower extremity muscle activities using pelvis, hip, knee and ankle joint angles. It uses an online gait database that contains kinematic and kinetic gait parameters and lower limb EMG. Four training algorithms were explored and investigated. Despite the noticeable differences between the actual and the estimated muscle activities, e.g. gluteus maximus and bicep femoris, the results demonstrate the feasibility of the proposed method in determining the muscle behaviour during walking. The study also shows the potentials of machine learning to compensate for the lack of modality and to provide an insight on the dynamics of muscles in gait. Clinical Relevance- Gait analysis is important in clinical and rehabilitation settings. The proposed method has the potential in reducing the dependency on EMGs and can be an alternative to the musculoskeletal modelling tools in diagnosing, treating, and rehabilitating gait abnormalities.
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