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A novel computational framework for deducing muscle synergies from experimental joint moments

机译:从实验关节力矩推论肌肉协同作用的新型计算框架

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摘要

Prior experimental studies have hypothesized the existence of a “muscle synergy” based control scheme for producing limb movements and locomotion in vertebrates. Such synergies have been suggested to consist of fixed muscle grouping schemes with the co-activation of all muscles in a synergy resulting in limb movement. Quantitative representations of these groupings (termed muscle weightings) and their control signals (termed synergy controls) have traditionally been derived by the factorization of experimentally measured EMG. This study presents a novel approach for deducing these weightings and controls from inverse dynamic joint moments that are computed from an alternative set of experimental measurements—movement kinematics and kinetics. This technique was applied to joint moments for healthy human walking at 0.7 and 1.7 m/s, and two sets of “simulated” synergies were computed based on two different criteria (1) synergies were required to minimize errors between experimental and simulated joint moments in a musculoskeletal model (pure-synergy solution) (2) along with minimizing joint moment errors, synergies also minimized muscle activation levels (optimal-synergy solution). On comparing the two solutions, it was observed that the introduction of optimality requirements (optimal-synergy) to a control strategy solely aimed at reproducing the joint moments (pure-synergy) did not necessitate major changes in the muscle grouping within synergies or the temporal profiles of synergy control signals. Synergies from both the simulated solutions exhibited many similarities to EMG derived synergies from a previously published study, thus implying that the analysis of the two different types of experimental data reveals similar, underlying synergy structures.
机译:先前的实验研究假设存在基于“肌肉协同作用”的控制方案,该控制方案用于在脊椎动物中产生肢体运动和运动。已经提出这种协同作用包括固定的肌肉分组方案,其中所有肌肉以共同的协同作用共同导致肢体运动。传统上,这些分组(称为肌肉权重)及其控制信号(称为协同控制)的定量表示是通过对实验测量的EMG进行因子分解而得出的。这项研究提出了一种新颖的方法,可以通过反向动态关节力矩来推导这些权重和控制,该动态关节力矩是通过另一组实验测量值(运动运动学和动力学)计算得出的。这项技术应用于健康人在0.7和1.7 m / s的步行力矩,并且基于两个不同的标准计算了两组“模拟”协同作用(1)需要协同作用以最大程度地减少实验和模拟关节力矩之间的误差。一个肌肉骨骼模型(纯协同解决方案)(2),以及最小化关节力矩误差,协同作用还最小化了肌肉激活水平(最佳协同解决方案)。在比较这两种解决方案时,可以观察到将最优性要求(最佳协同作用)引入仅旨在再现关节力矩(纯协同作用)的控制策略,并不需要在协同作用或暂时性作用下对肌肉分组进行重大改变。协同控制信号的分布图。两种模拟解决方案的协同作用都与先前发表的研究从EMG得出的协同作用表现出许多相似性,因此暗示对两种不同类型的实验数据的分析揭示了相似的潜在协同结构。

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