Department of Computer Science, University of Toronto, Ontario, Canada.
J Biomech. 2012 May 11;45(8):1507-13. doi: 10.1016/j.jbiomech.2012.01.051. Epub 2012 Mar 9.
Understanding muscle architecture is crucial to determining the mechanical function of muscle during body movements, because architectural parameters directly correspond to muscle performance. Accurate parameters are thus essential for reliable simulation. Human cadaveric muscle specimen data provides the anatomical detail needed for in-depth understanding of muscle and accurate parameter estimation. However, as muscle generally has non-uniform architecture, parameter estimation, specifically, physiological cross-sectional area (PCSA), is rarely straightforward. To deal effectively with this non-uniformity, we propose a geometric approach in which a polygon is sought to best approximate the cross-sectional area of each fascicle by accounting for its three-dimensional trajectory and arrangement in the muscle. Those polygons are then aggregated to determine PCSA and volume of muscle. Experiments are run using both synthetic data and muscle specimen data. From comparison of PCSA using synthetic data, we conclude that the proposed method enhances the robustness of PCSA estimation against variation in muscle architecture. Furthermore, we suggest reconstruction methods to extract 3D muscle geometry directly from fascicle data and estimated parameters using the level set method.
了解肌肉结构对于确定身体运动中肌肉的机械功能至关重要,因为结构参数直接对应于肌肉性能。因此,准确的参数对于可靠的模拟至关重要。人体尸体肌肉标本数据为深入了解肌肉和准确参数估计提供了所需的解剖细节。然而,由于肌肉通常具有非均匀的结构,参数估计,特别是生理横截面积(PCSA),很少是直接的。为了有效地处理这种非均匀性,我们提出了一种几何方法,通过考虑每个肌束的三维轨迹和在肌肉中的排列,寻找一个多边形来最佳逼近横截面面积。然后将这些多边形聚合以确定肌肉的 PCSA 和体积。实验使用合成数据和肌肉标本数据进行。通过对合成数据的 PCSA 进行比较,我们得出结论,所提出的方法增强了 PCSA 估计对肌肉结构变化的鲁棒性。此外,我们建议使用水平集方法从肌束数据中直接提取 3D 肌肉几何形状并使用估计参数的重建方法。