Ajiboye A B, Weir R F
Department of Biomedical Engineering, Northwestern University, Evanston, IL 60201, USA.
J Neural Eng. 2009 Jun;6(3):036004. doi: 10.1088/1741-2560/6/3/036004. Epub 2009 May 12.
Synchronous muscle synergies have been suggested as a framework for dimensionality reduction in muscle coordination. Many studies have shown that synergies form a descriptive framework for a wide variety of tasks. We examined if a muscle synergy framework could accurately predict the EMG patterns associated with untrained static hand postures, in essence, if they formed a predictive framework. Hand and forearm muscle activities were recorded while subjects statically mimed 33 postures of the American Sign Language alphabet. Synergies were extracted from a subset of training postures using non-negative matrix factorization and used to predict the EMG patterns of the remaining postures. Across the subject population, as few as 11 postures could form an eight-dimensional synergy framework that allowed for at least 90% prediction of the EMG patterns of all 33 postures, including trial-to-trial variations. Synergies were quite robust despite using different postures in the training set, and also despite using a varied number of postures. Estimated synergies were categorized into those which were subject-specific and those which were general to the population. Population synergies were sparser than the subject-specific synergies, typically being dominated by a single muscle. Subject-specific synergies were more balanced in the coactivation of multiple muscles. We suggest as a result that global muscle coordination may be a combination of higher order control of robust subject-specific muscle synergies and lower order control of individuated muscles, and that this control paradigm may be useful in the control of EMG-based technologies, such as artificial limbs and functional electrical stimulation systems.
同步肌肉协同作用被认为是肌肉协调中降维的一个框架。许多研究表明,协同作用为各种各样的任务形成了一个描述性框架。我们研究了肌肉协同作用框架是否能准确预测与未经训练的静态手部姿势相关的肌电图模式,从本质上讲,即它们是否形成了一个预测性框架。在受试者静态模仿美国手语字母表的33种姿势时,记录了手部和前臂肌肉的活动。使用非负矩阵分解从训练姿势的子集中提取协同作用,并用于预测其余姿势的肌电图模式。在所有受试者中,少至11种姿势就能形成一个八维协同作用框架,该框架能对所有33种姿势的肌电图模式进行至少90%的预测,包括试验间的变化。尽管在训练集中使用了不同的姿势,并且姿势数量也各不相同,但协同作用相当稳健。估计的协同作用被分为特定于个体的协同作用和群体通用的协同作用。群体协同作用比特定于个体的协同作用更稀疏,通常由单一肌肉主导。特定于个体的协同作用在多块肌肉的共同激活方面更为平衡。因此,我们认为整体肌肉协调可能是对稳健的特定于个体的肌肉协同作用的高阶控制和对个体化肌肉的低阶控制的结合,并且这种控制范式可能在基于肌电图的技术(如假肢和功能性电刺激系统)的控制中有用。