Biomedical Engineering Department, University of Southern California, Los Angeles, CA 90089, USA.
IEEE Trans Neural Syst Rehabil Eng. 2012 Mar;20(2):117-33. doi: 10.1109/TNSRE.2011.2162851. Epub 2011 Aug 18.
Muscles convert metabolic energy into mechanical work. A computational model of muscle would ideally compute both effects efficiently for the entire range of muscle activation and kinematic conditions (force and length). We have extended the original Virtual Muscle algorithm (Cheng , 2000) to predict energy consumption for both slow- and fast-twitch muscle fiber types, partitioned according to the activation process (E(a)), cross-bridge cycling (E(xb)) and ATP/PCr recovery (E(recovery)). Because the terms of these functions correspond to identifiable physiological processes, their coefficients can be estimated directly from the types of experiments that are usually performed and extrapolated to dynamic conditions of natural motor behaviors. We also implemented a new approach to lumped modeling of the gradually recruited and frequency modulated motor units comprising each fiber type, which greatly reduced computational time. The emergent behavior of the model has significant implications for studies of optimal motor control and development of rehabilitation strategies because its trends were quite different from traditional estimates of energy (e.g., activation, force, stress, work, etc.). The model system was scaled to represent three different human experimental paradigms in which muscle heat was measured during voluntary exercise; predicted and observed energy rate agreed well both qualitatively and quantitatively.
肌肉将代谢能转化为机械功。理想情况下,肌肉的计算模型应该能够在整个肌肉激活和运动学条件范围内(力和长度)高效地计算这两种效应。我们已经扩展了原始的虚拟肌肉算法(Cheng,2000),以预测根据激活过程(E(a))、横桥循环(E(xb))和 ATP/PCr 恢复(E(recovery))划分的慢肌和快肌纤维类型的能量消耗。由于这些函数的项对应于可识别的生理过程,因此可以直接从通常进行的实验类型中估计它们的系数,并将其外推到自然运动行为的动态条件。我们还实现了一种新的方法来对构成每种纤维类型的逐渐募集和频率调制的运动单位进行集中建模,这大大减少了计算时间。该模型的涌现行为对最佳运动控制研究和康复策略的发展具有重要意义,因为其趋势与传统的能量估计(例如激活、力、应力、功等)有很大不同。该模型系统被扩展以代表在自愿运动期间测量肌肉热量的三种不同人类实验范例;预测和观察到的能量率在定性和定量上都非常吻合。