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对步态中基于逆动力学的肌肉力优化的募集准则、肌肉肌腱模型和肌肉协调策略进行公平且肌电图验证的比较。

A fair and EMG-validated comparison of recruitment criteria, musculotendon models and muscle coordination strategies, for the inverse-dynamics based optimization of muscle forces during gait.

机构信息

Laboratory of Mechanical Engineering, University of La Coruña, Ferrol, Spain.

出版信息

J Neuroeng Rehabil. 2021 Jan 28;18(1):17. doi: 10.1186/s12984-021-00806-6.

Abstract

Experimental studies and EMG collections suggest that a specific strategy of muscle coordination is chosen by the central nervous system to perform a given motor task. A popular mathematical approach for solving the muscle recruitment problem is optimization. Optimization-based methods minimize or maximize some criterion (objective function or cost function) which reflects the mechanism used by the central nervous system to recruit muscles for the movement considered. The proper cost function is not known a priori, so the adequacy of the chosen function must be validated according to the obtained results. In addition of the many criteria proposed, several physiological representations of the musculotendon actuator dynamics (that prescribe constraints for the forces) along with different musculoskeletal models can be found in the literature, which hinders the selection of the best neuromusculotendon model for each application. Seeking to provide a fair base for comparison, this study measures the efficiency and accuracy of: (i) four different criteria within the static optimization approach (where the physiological character of the muscle, which affects the constraints of the forces, is not considered); (ii) three physiological representations of the musculotendon actuator dynamics: activation dynamics with elastic tendon, simplified activation dynamics with rigid tendon and rigid tendon without activation dynamics; (iii) a synergy-based method; all of them within the framework of inverse-dynamics based optimization. Motion/force/EMG gait analyses were performed on ten healthy subjects. A musculoskeletal model of the right leg actuated by 43 Hill-type muscles was scaled to each subject and used to calculate joint moments, musculotendon kinematics and moment arms. Muscle activations were then estimated using the different approaches, and these estimates were compared with EMG measurements. Although no significant differences were obtained with all the methods at statistical level, it must be pointed out that a higher complexity of the method does not guarantee better results, as the best correlations with experimental values were obtained with two simplified approaches: the static optimization and the physiological approach with simplified activation dynamics and rigid tendon, both using the sum of the squares of muscle forces as objective function.

摘要

实验研究和肌电图采集表明,中枢神经系统选择特定的肌肉协调策略来执行给定的运动任务。一种流行的用于解决肌肉募集问题的数学方法是优化。基于优化的方法最小化或最大化一些准则(目标函数或代价函数),该准则反映了中枢神经系统用于为所考虑的运动募集肌肉的机制。适当的代价函数事先未知,因此必须根据获得的结果验证所选函数的充分性。除了提出的许多准则外,文献中还可以找到许多种肌肉肌腱执行器动力学的生理表示形式(为力规定约束)以及不同的骨骼肌肉模型,这阻碍了为每个应用选择最佳的神经肌肉肌腱模型。为了提供公平的比较基础,本研究测量了以下几种方法的效率和准确性:(i)静态优化方法中的四种不同准则(其中不考虑肌肉的生理特性,而肌肉的生理特性会影响力的约束);(ii)肌肉肌腱执行器动力学的三种生理表示形式:带弹性肌腱的激活动力学、带刚性肌腱的简化激活动力学和无激活动力学的刚性肌腱;(iii)基于协同作用的方法;所有这些方法都基于基于逆动力学的优化。对 10 名健康受试者进行了运动/力/肌电图步态分析。一个由 43 个 Hill 型肌肉驱动的右腿骨骼肌肉模型被缩放到每个受试者,并用于计算关节力矩、肌肉肌腱运动学和力臂。然后使用不同的方法估计肌肉激活,并将这些估计与肌电图测量结果进行比较。尽管所有方法在统计学水平上都没有显著差异,但必须指出的是,方法的复杂性并不一定保证更好的结果,因为与实验值相关性最好的是两种简化方法:静态优化和简化激活动力学和刚性肌腱的生理方法,这两种方法都使用肌肉力的平方和作为目标函数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71ff/7841909/ee2f19942a68/12984_2021_806_Fig1_HTML.jpg

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