Department of Bioengineering, Imperial College London, Royal School of Mines Building, London, SW7 2AZ, UK.
Royal Centre for Defence Medicine, Birmingham, UK.
Ann Biomed Eng. 2018 Jan;46(1):71-85. doi: 10.1007/s10439-017-1936-z. Epub 2017 Oct 2.
Hand musculoskeletal models provide a valuable insight into the loads withstood by the upper limb; however, their development remains challenging because there are few datasets describing both the musculoskeletal geometry and muscle morphology from the elbow to the finger tips. Clinical imaging, optical motion capture and microscopy were used to create a dataset from a single specimen. Subsequently, a musculoskeletal model of the wrist was developed based on these data to estimate muscle tensions and to demonstrate the potential of the provided parameters. Tendon excursions and moment arms predicted by this model were in agreement with previously reported experimental data. When simulating a flexion-extension motion, muscle forces reached 90 N among extensors and a co-contraction of flexors, amounting to 62.6 N, was estimated by the model. Two alternative musculoskeletal models were also created based on anatomical data available in the literature to illustrate the effect of combining incomplete datasets. Compared to the initial model, the intensities and load sharing of the muscles estimated by the two alternative models differed by up to 180% for a single muscle. This confirms the importance of using a single source of anatomical data when developing such models.
手部肌肉骨骼模型为上肢所承受的负荷提供了有价值的见解;然而,由于很少有数据集同时描述从肘部到指尖的肌肉骨骼几何形状和肌肉形态,因此其开发仍然具有挑战性。本研究使用临床成像、光学运动捕捉和显微镜从单个标本创建了一个数据集。随后,基于这些数据开发了一个腕部肌肉骨骼模型,以估计肌肉张力并展示所提供参数的潜力。该模型预测的肌腱位移和力矩臂与先前报道的实验数据一致。在模拟屈伸运动时,模型估计伸肌的肌肉力达到 90 N,同时估计屈肌的协同收缩力达到 62.6 N。还根据文献中可用的解剖学数据创建了另外两个肌肉骨骼模型,以说明组合不完整数据集的效果。与初始模型相比,两个替代模型估计的单个肌肉的肌肉强度和负荷分担差异最大可达 180%。这证实了在开发此类模型时使用单一解剖学数据源的重要性。