Center for Orthopaedic Biomechanics, Department of Mechanical and Materials Engineering, University of Denver, Denver, CO 80210.
Department of Biomedical Engineering and Computational Biomodeling (CoBi) Core, Lerner Research Institute, Cleveland Clinic, Cleveland, OH 44195.
J Biomech Eng. 2023 Dec 1;145(12). doi: 10.1115/1.4063627.
Model reproducibility is a point of emphasis for the National Institutes of Health (NIH) and in science, broadly. As the use of computational modeling in biomechanics and orthopedics grows, so does the need to assess the reproducibility of modeling workflows and simulation predictions. The long-term goal of the KneeHub project is to understand the influence of potentially subjective decisions, thus the modeler's "art", on the reproducibility and predictive uncertainty of computational knee joint models. In this paper, we report on the model calibration phase of this project, during which five teams calibrated computational knee joint models of the same specimens from the same specimen-specific joint mechanics dataset. We investigated model calibration approaches and decisions, and compared calibration workflows and model outcomes among the teams. The selection of the calibration targets used in the calibration workflow differed greatly between the teams and was influenced by modeling decisions related to the representation of structures, and considerations for computational cost and implementation of optimization. While calibration improved model performance, differences in the postcalibration ligament properties and predicted kinematics were quantified and discussed in the context of modeling decisions. Even for teams with demonstrated expertise, model calibration is difficult to foresee and plan in detail, and the results of this study underscore the importance of identification and standardization of best practices for data sharing and calibration.
模型可重复性是美国国立卫生研究院(NIH)和整个科学界关注的重点。随着计算建模在生物力学和矫形外科中的应用不断增加,评估建模工作流程和模拟预测的可重复性变得越来越重要。KneeHub 项目的长期目标是了解潜在主观决策(即建模者的“艺术”)对计算膝关节模型的可重复性和预测不确定性的影响。在本文中,我们报告了该项目的模型校准阶段,在此期间,五个团队对来自同一特定于标本的关节力学数据集的相同标本的计算膝关节模型进行了校准。我们研究了模型校准方法和决策,并比较了团队之间的校准工作流程和模型结果。校准工作流程中使用的校准目标的选择在团队之间存在很大差异,并且受到与结构表示相关的建模决策以及计算成本和优化实施的考虑因素的影响。虽然校准提高了模型性能,但在韧带特性和预测运动学方面的后校准差异在建模决策的背景下进行了量化和讨论。即使对于具有专业知识的团队,模型校准也很难详细预见和计划,本研究的结果强调了确定和标准化数据共享和校准最佳实践的重要性。