Haghpanah Seyyed Arash, Farahmand Farzam, Zohoor Hassan
Mechanical Engineering Department, Sharif University of Technology, Azadi Avenue, Tehran, Iran.
Mechanical Engineering Department, Sharif University of Technology, Azadi Avenue, Tehran, Iran; RCBTR, Tehran University of Medical Sciences, Tehran, Iran.
J Biomech. 2017 Feb 28;53:154-162. doi: 10.1016/j.jbiomech.2017.01.020. Epub 2017 Jan 19.
The central pattern generators (CPG) in the spinal cord are thought to be responsible for producing the rhythmic motor patterns during rhythmic activities. For locomotor tasks, this involves much complexity, due to a redundant system of muscle actuators with a large number of highly nonlinear muscles. This study proposes a reduced neural control strategy for the CPG, based on modular organization of the co-active muscles, i.e., muscle synergies. Four synergies were extracted from the EMG data of the major leg muscles of two subjects, during two gait trials each, using non-negative matrix factorization algorithm. A Matsuoka׳s four-neuron CPG model with mutual inhibition, was utilized to generate the rhythmic activation patterns of the muscle synergies, using the hip flexion angle and foot contact force information from the sensory afferents as inputs. The model parameters were tuned using the experimental data of one gait trial, which resulted in a good fitting accuracy (RMSEs between 0.0491 and 0.1399) between the simulation and experimental synergy activations. The model׳s performance was then assessed by comparing its predictions for the activation patterns of the individual leg muscles during locomotion with the relevant EMG data. Results indicated that the characteristic features of the complex activation patterns of the muscles were well reproduced by the model for different gait trials and subjects. In general, the CPG- and muscle synergy-based model was promising in view of its simple architecture, yet extensive potentials for neuromuscular control, e.g., resolving redundancies, distributed and fast control, and modulation of locomotion by simple control signals.
脊髓中的中枢模式发生器(CPG)被认为在节律性活动期间负责产生节律性运动模式。对于运动任务而言,由于存在具有大量高度非线性肌肉的冗余肌肉驱动系统,这涉及到很大的复杂性。本研究基于共同激活肌肉的模块化组织,即肌肉协同作用,为CPG提出了一种简化的神经控制策略。使用非负矩阵分解算法,从两名受试者主要腿部肌肉的肌电图数据中,在每人两次步态试验期间提取了四种协同作用。利用带有相互抑制的松冈四神经元CPG模型,将来自感觉传入神经的髋部屈曲角度和足部接触力信息作为输入,来生成肌肉协同作用的节律性激活模式。使用一次步态试验的实验数据对模型参数进行了调整,这使得模拟和实验协同激活之间具有良好的拟合精度(均方根误差在0.0491至0.1399之间)。然后通过将其对运动期间单个腿部肌肉激活模式的预测与相关肌电图数据进行比较,来评估模型的性能。结果表明,该模型很好地再现了不同步态试验和受试者肌肉复杂激活模式的特征。总体而言,基于CPG和肌肉协同作用的模型鉴于其简单的架构,在神经肌肉控制方面具有广阔的潜力,例如解决冗余问题、分布式快速控制以及通过简单控制信号调节运动。