Leatherman Erin R, Guo Hongqiang, Gilbert Susannah L, Hutchinson Ian D, Maher Suzanne A, Santner Thomas J
J Biomech Eng. 2014 Jul;136(7):0710071-8. doi: 10.1115/1.4027510.
This paper describes a methodology for selecting a set of biomechanical engineering design variables to optimize the performance of an engineered meniscal substitute when implanted in a population of subjects whose characteristics can be specified stochastically. For the meniscal design problem where engineering variables include aspects of meniscal geometry and meniscal material properties, this method shows that meniscal designs having simultaneously large radial modulus and large circumferential modulus provide both low mean peak contact stress and small variability in peak contact stress when used in the specified subject population. The method also shows that the mean peak contact stress is relatively insensitive to meniscal permeability, so the permeability used in the manufacture of a meniscal substitute can be selected on the basis of manufacturing ease or cost. This is a multiple objective problem with the mean peak contact stress over the population of subjects and its variability both desired to be small. The problem is solved by using a predictor of the mean peak contact stress across the tibial plateau that was developed from experimentally measured peak contact stresses from two modalities. The first experimental modality provided computed peak contact stresses using a finite element computational simulator of the dynamic tibial contact stress during axial dynamic loading. A small number of meniscal designs with specified subject environmental inputs were selected to make computational runs and to provide training data for the predictor developed below. The second experimental modality consisted of measured peak contact stress from a set of cadaver knees. The cadaver measurements were used to bias-correct and calibrate the simulator output. Because the finite element simulator is expensive to evaluate, a rapidly computable (calibrated) Kriging predictor was used to explore extensively the contact stresses for a wide range of meniscal engineering inputs and subject variables. The predicted values were used to determine the Pareto optimal set of engineering inputs to minimize peak contact stresses in the targeted population of subjects.
本文描述了一种方法,用于选择一组生物力学工程设计变量,以优化工程化半月板替代物植入具有随机指定特征的受试者群体时的性能。对于半月板设计问题,其中工程变量包括半月板几何形状和半月板材料特性等方面,该方法表明,在指定的受试者群体中使用时,同时具有大径向模量和大周向模量的半月板设计既能提供低平均峰值接触应力,又能使峰值接触应力的变异性较小。该方法还表明,平均峰值接触应力对半月板渗透率相对不敏感,因此可以根据制造的难易程度或成本来选择用于制造半月板替代物的渗透率。这是一个多目标问题,希望受试者群体中的平均峰值接触应力及其变异性都较小。该问题通过使用基于两种模态的实验测量峰值接触应力开发的胫骨平台平均峰值接触应力预测器来解决。第一种实验模态使用轴向动态加载期间动态胫骨接触应力的有限元计算模拟器提供计算的峰值接触应力。选择少量具有指定受试者环境输入的半月板设计进行计算运行,并为下面开发的预测器提供训练数据。第二种实验模态包括一组尸体膝关节的测量峰值接触应力。尸体测量用于对模拟器输出进行偏差校正和校准。由于有限元模拟器的评估成本很高,因此使用快速可计算(校准)的克里金预测器来广泛探索各种半月板工程输入和受试者变量的接触应力。预测值用于确定工程输入的帕累托最优集,以最小化目标受试者群体中的峰值接触应力。