Diaz Maximillian T, Harley Joel B, Nichols Jennifer A
J. Crayton Pruitt Family Department of Biomedical Engineering, University of Florida, 1275 Center Drive, BMS JG-56, P. O. Box 116131 Gainesville, FL 32611.
Department of Electrical & Computer Engineering, University of Florida, P. O. Box 116130, Gainesville, FL 32611.
J Biomech Eng. 2024 Feb 1;146(2). doi: 10.1115/1.4064056.
Sensitivity coefficients are used to understand how errors in subject-specific musculoskeletal model parameters influence model predictions. Previous sensitivity studies in the lower limb calculated sensitivity using perturbations that do not fully represent the diversity of the population. Hence, the present study performs sensitivity analysis in the upper limb using a large synthetic dataset to capture greater physiological diversity. The large dataset (n = 401 synthetic subjects) was created by adjusting maximum isometric force, optimal fiber length, pennation angle, and bone mass to induce atrophy, hypertrophy, osteoporosis, and osteopetrosis in two upper limb musculoskeletal models. Simulations of three isometric and two isokinetic upper limb tasks were performed using each synthetic subject to predict muscle activations. Sensitivity coefficients were calculated using three different methods (two point, linear regression, and sensitivity functions) to understand how changes in Hill-type parameters influenced predicted muscle activations. The sensitivity coefficient methods were then compared by evaluating how well the coefficients accounted for measurement uncertainty. This was done by using the sensitivity coefficients to predict the range of muscle activations given known errors in measuring musculoskeletal parameters from medical imaging. Sensitivity functions were found to best account for measurement uncertainty. Simulated muscle activations were most sensitive to optimal fiber length and maximum isometric force during upper limb tasks. Importantly, the level of sensitivity was muscle and task dependent. These findings provide a foundation for how large synthetic datasets can be applied to capture physiologically diverse populations and understand how model parameters influence predictions.
敏感性系数用于了解特定个体肌肉骨骼模型参数中的误差如何影响模型预测。以往针对下肢的敏感性研究在计算敏感性时所使用的扰动并不能完全代表人群的多样性。因此,本研究在上肢进行敏感性分析,使用一个大型合成数据集以获取更大的生理多样性。通过调整最大等长肌力、最佳纤维长度、羽状角和骨量,在两个上肢肌肉骨骼模型中诱发萎缩、肥大、骨质疏松和骨质硬化,从而创建了大型数据集(n = 401个合成个体)。使用每个合成个体对三项等长和两项等速上肢任务进行模拟,以预测肌肉激活情况。使用三种不同方法(两点法、线性回归法和敏感性函数法)计算敏感性系数,以了解希尔型参数的变化如何影响预测的肌肉激活情况。然后通过评估系数对测量不确定性的解释程度来比较敏感性系数方法。这是通过在已知医学成像测量肌肉骨骼参数存在误差的情况下,使用敏感性系数来预测肌肉激活范围来实现的。结果发现敏感性函数最能解释测量不确定性。在上肢任务期间,模拟的肌肉激活对最佳纤维长度和最大等长肌力最为敏感。重要的是,敏感程度取决于肌肉和任务。这些发现为如何应用大型合成数据集来获取生理上多样化的人群以及理解模型参数如何影响预测奠定了基础。