Department of Mechanical Engineering, University of Melbourne, Parkville, Melbourne, VIC 3010, Australia.
J Biomech. 2013 Aug 9;46(12):2097-100. doi: 10.1016/j.jbiomech.2013.05.023. Epub 2013 Jun 20.
Comparing the available electromyography (EMG) and the related uncertainties with the space of muscle forces potentially driving the same motion can provide insights into understanding human motion in healthy and pathological neuromotor conditions. However, it is not clear how effective the available computational tools are in completely sample the possible muscle forces. In this study, we compared the effectiveness of Metabolica and the Null-Space algorithm at generating a comprehensive spectrum of possible muscle forces for a representative motion frame. The hip force peak during a selected walking trial was identified using a lower-limb musculoskeletal model. The joint moments, the muscle lever arms, and the muscle force constraints extracted from the model constituted the indeterminate equilibrium equation at the joints. Two spectra, each containing 200,000 muscle force samples, were calculated using Metabolica and the Null-Space algorithm. The full hip force range was calculated using optimization and compared with the hip force ranges derived from the Metabolica and the Null-Space spectra. The Metabolica spectrum spanned a much larger force range than the NS spectrum, reaching 811N difference for the gluteus maximus intermediate bundle. The Metabolica hip force range exhibited a 0.3-0.4 BW error on the upper and lower boundaries of the full hip force range (3.4-11.3 BW), whereas the full range was imposed in the NS spectrum. The results suggest that Metabolica is well suited for exhaustively sample the spectrum of possible muscle recruitment strategy. Future studies will investigate the muscle force range in healthy and pathological neuromotor conditions.
比较现有的肌电图(EMG)和相关不确定性与潜在驱动同一运动的肌肉力量空间,可以深入了解健康和病理神经运动条件下的人体运动。然而,目前还不清楚现有的计算工具在完全采样可能的肌肉力量方面的效果如何。在这项研究中,我们比较了 Metabolica 和 Null-Space 算法在为代表性运动帧生成全面的可能肌肉力量谱方面的有效性。使用下肢肌肉骨骼模型确定选定步行试验期间的髋关节力峰值。从模型中提取的关节力矩、肌肉杠杆臂和肌肉力约束构成了关节处的不确定平衡方程。使用 Metabolica 和 Null-Space 算法计算了两个包含 200,000 个肌肉力量样本的谱。使用优化计算了完整的髋关节力范围,并将其与从 Metabolica 和 Null-Space 谱得出的髋关节力范围进行了比较。Metabolica 谱的力范围比 NS 谱大得多,对于臀中肌中间束的差异达到 811N。Metabolica 髋关节力范围在上部和下部边界(3.4-11.3 BW)的全髋关节力范围上存在 0.3-0.4 BW 的误差,而在 NS 谱中施加了全范围。结果表明,Metabolica 非常适合彻底采样可能的肌肉募集策略谱。未来的研究将调查健康和病理神经运动条件下的肌肉力量范围。