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Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?

机译:特定于对象的肌肉骨骼模型是否对参数识别的不确定性具有鲁棒性?

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摘要

Subject-specific musculoskeletal modeling can be applied to study musculoskeletal disorders, allowing inclusion of personalized anatomy and properties. Independent of the tools used for model creation, there are unavoidable uncertainties associated with parameter identification, whose effect on model predictions is still not fully understood. The aim of the present study was to analyze the sensitivity of subject-specific model predictions (i.e., joint angles, joint moments, muscle and joint contact forces) during walking to the uncertainties in the identification of body landmark positions, maximum muscle tension and musculotendon geometry. To this aim, we created an MRI-based musculoskeletal model of the lower limbs, defined as a 7-segment, 10-degree-of-freedom articulated linkage, actuated by 84 musculotendon units. We then performed a Monte-Carlo probabilistic analysis perturbing model parameters according to their uncertainty, and solving a typical inverse dynamics and static optimization problem using 500 models that included the different sets of perturbed variable values. Model creation and gait simulations were performed by using freely available software that we developed to standardize the process of model creation, integrate with OpenSim and create probabilistic simulations of movement. The uncertainties in input variables had a moderate effect on model predictions, as muscle and joint contact forces showed maximum standard deviation of 0.3 times body-weight and maximum range of 2.1 times body-weight. In addition, the output variables significantly correlated with few input variables (up to 7 out of 312) across the gait cycle, including the geometry definition of larger muscles and the maximum muscle tension in limited gait portions. Although we found subject-specific models not markedly sensitive to parameter identification, researchers should be aware of the model precision in relation to the intended application. In fact, force predictions could be affected by an uncertainty in the same order of magnitude of its value, although this condition has low probability to occur.
机译:特定对象的骨骼肌肉建模可以用于研究骨骼肌肉疾病,从而可以包含个性化的解剖结构和属性。与用于模型创建的工具无关,存在与参数识别相关的不可避免的不确定性,其对模型预测的影响仍未完全了解。本研究的目的是分析步行过程中受试者特定模型预测(即关节角度,关节力矩,肌肉和关节接触力)对确定身体标志位置,最大肌肉张力和肌腱的不确定性的敏感性。几何。为此,我们创建了一个基于MRI的下肢肌肉骨骼模型,定义为7段,10自由度的关节连接,由84个肌腱单元驱动。然后,我们执行了蒙特卡洛概率分析,根据模型参数的不确定性对其进行扰动,并使用500个包含不同扰动变量集的模型来解决典型的逆动力学和静态优化问题。通过使用免费开发的软件执行模型创建和步态仿真,我们开发了该软件来标准化模型创建过程,与OpenSim集成并创建运动的概率仿真。输入变量的不确定性对模型预测有中等影响,因为肌肉和关节的接触力显示最大标准偏差为体重的0.3倍,最大范围为体重的2.1倍。此外,在整个步态周期中,输出变量与很少的输入变量(最多312个中的7个)显着相关,包括较大肌肉的几何形状定义和有限步态部分的最大肌肉张力。尽管我们发现特定于对象的模型对参数识别没有明显的敏感性,但研究人员应注意与预期应用有关的模型精度。实际上,力预测可能会受到其值的相同数量级的不确定性的影响,尽管这种情况发生的可能性很小。

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