Amsterdam UMC, Vrije Universiteit Amsterdam, Department of Rehabilitation Medicine, Amsterdam Movement Sciences, de Boelelaan 1117, Amsterdam, the Netherlands; School of Allied Health Sciences, Griffith University, Gold Coast, Australia; Griffith Centre for Biomedical & Rehabilitation Engineering (GCORE), Menzies Health Institute Queensland, and Advanced Design and Prototyping Technologies Institute (ADAPT), Griffith University Gold Coast, Australia.
Amsterdam UMC, Vrije Universiteit Amsterdam, Department of Rehabilitation Medicine, Amsterdam Movement Sciences, de Boelelaan 1117, Amsterdam, the Netherlands; Amsterdam UMC, Univ of Amsterdam, Rehabilitation Medicine, Amsterdam Movement Sciences, Meibergdreef 9, Amsterdam, the Netherlands.
J Biomech. 2021 Jun 23;123:110530. doi: 10.1016/j.jbiomech.2021.110530. Epub 2021 May 18.
Accurate predictive simulations of human gait rely on optimisation criteria to solve the system's redundancy. Defining such criteria is challenging, as the objectives driving the optimization of human gait are unclear. This study evaluated how minimising various physiologically-based criteria (i.e., cost of transport, muscle activity, head stability, foot-ground impact, and knee ligament use) affects the predicted gait, and developed and evaluated a combined, weighted cost function tuned to predict healthy gait. A generic planar musculoskeletal model with 18 Hill-type muscles was actuated using a reflex-based, parameterized controller. First, the criteria were applied into the base simulation framework separately. The gait pattern predicted by minimising each criterion was compared to experimental data of healthy gait using coefficients of determination (R) and root mean square errors (RMSE) averaged over all biomechanical variables. Second, the optimal weighted combined cost function was created through stepwise addition of the criteria. Third, performance of the resulting combined cost function was evaluated by comparing the predicted gait to a simulation that was optimised solely to track experimental data. Optimising for each of the criteria separately showed their individual contribution to distinct aspects of gait (overall R: 0.37-0.56; RMSE: 3.47-4.63 SD). An optimally weighted combined cost function provided improved overall agreement with experimental data (overall R: 0.72; RMSE: 2.10 SD), and its performance was close to what is maximally achievable for the underlying simulation framework. This study showed how various optimisation criteria contribute to synthesising gait and that careful weighting of them is essential in predicting healthy gait.
准确预测人类步态依赖于优化标准来解决系统的冗余问题。定义这样的标准是具有挑战性的,因为驱动人类步态优化的目标尚不清楚。本研究评估了最小化各种基于生理学的标准(即,运输成本、肌肉活动、头部稳定性、足地冲击和膝关节韧带使用)如何影响预测步态,并开发和评估了一个综合的、加权成本函数,以预测健康步态。使用基于反射的参数化控制器对具有 18 个 Hill 型肌肉的通用平面肌肉骨骼模型进行了驱动。首先,将标准分别应用于基础模拟框架中。通过决定系数 (R) 和所有生物力学变量的均方根误差 (RMSE) 平均值,将最小化每个标准预测的步态与健康步态的实验数据进行比较。其次,通过逐步添加标准来创建最优加权组合成本函数。然后,通过将预测步态与仅优化以跟踪实验数据的模拟进行比较,来评估由此产生的组合成本函数的性能。分别优化每个标准显示了它们对步态不同方面的单独贡献(整体 R:0.37-0.56;RMSE:3.47-4.63 SD)。最优加权组合成本函数提供了与实验数据更好的整体一致性(整体 R:0.72;RMSE:2.10 SD),并且其性能接近基础模拟框架下的最大可实现性能。本研究表明了各种优化标准如何有助于综合步态,以及仔细加权它们对于预测健康步态是至关重要的。