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Effort minimization and synergistic muscle recruitment for three-dimensional force generation

机译:最小化力和协同增肌以产生三维力

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摘要

To generate a force at the hand in a given spatial direction and with a given magnitude the central nervous system (CNS) has to coordinate the recruitment of many muscles. Because of the redundancy in the musculoskeletal system, the CNS can choose one of infinitely many possible muscle activation patterns which generate the same force. What strategies and constraints underlie such selection is an open issue. The CNS might optimize a performance criterion, such as accuracy or effort. Moreover, the CNS might simplify the solution by constraining it to be a combination of a few muscle synergies, coordinated recruitment of groups of muscles. We tested whether the CNS generates forces by minimum effort recruitment of either individual muscles or muscle synergies. We compared the activation of arm muscles observed during the generation of isometric forces at the hand across multiple three-dimensional force targets with the activation predicted by either minimizing the sum of squared muscle activations or the sum of squared synergy activations. Muscle synergies were identified from the recorded muscle pattern using non-negative matrix factorization. To perform both optimizations we assumed a linear relationship between rectified and filtered electromyographic (EMG) signal which we estimated using multiple linear regressions. We found that the minimum effort recruitment of synergies predicted the observed muscle patterns better than the minimum effort recruitment of individual muscles. However, both predictions had errors much larger than the reconstruction error obtained by the synergies, suggesting that the CNS generates three-dimensional forces by sub-optimal recruitment of muscle synergies.
机译:为了在给定的空间方向上以给定的大小在手部产生力量,中枢神经系统(CNS)必须协调许多肌肉的募集。由于肌肉骨骼系统的冗余,CNS可以选择产生相同力的无限多种可能的肌肉激活模式之一。选择的基础是什么策略和约束条件是一个悬而未决的问题。 CNS可能会优化性能标准,例如准确性或工作量。此外,CNS可以通过将其约束为一些肌肉协同增效,协调补充肌肉群的方式来简化解决方案。我们测试了CNS是否通过最小程度地补充单个肌肉或肌肉协同作用来产生力量。我们将通过多个三维力目标在手上的等距力生成过程中观察到的手臂肌肉的激活与通过最小化平方的肌肉激活之和或平方的协同激活之和预测的激活进行了比较。使用非负矩阵分解从记录的肌肉模式中识别出肌肉协同作用。为了执行这两种优化,我们假设经过整流和滤波的肌电图(EMG)信号之间存在线性关系,我们使用多重线性回归进行了估算。我们发现,协同工作的最小努力招募比单个肌肉的最小努力招募更好地预测了观察到的肌肉模式。但是,这两个预测的误差都远大于通过协同作用获得的重建误差,这表明CNS通过次佳的肌肉协同作用产生了三维力。

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