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人体近端股骨个性化分析的不确定性量化

Uncertainty quantification for personalized analyses of human proximal femurs.

作者信息

Wille Hagen, Ruess Martin, Rank Ernst, Yosibash Zohar

机构信息

Chair for Computation in Engineering, Technische Universität München, Munich, Germany.

Faculty of Aerospace Engineering, Delft University of Technology, Delft, Netherlands.

出版信息

J Biomech. 2016 Feb 29;49(4):520-7. doi: 10.1016/j.jbiomech.2015.11.013. Epub 2015 Dec 2.

Abstract

Computational models for the personalized analysis of human femurs contain uncertainties in bone material properties and loads, which affect the simulation results. To quantify the influence we developed a probabilistic framework based on polynomial chaos (PC) that propagates stochastic input variables through any computational model. We considered a stochastic E-ρ relationship and a stochastic hip contact force, representing realistic variability of experimental data. Their influence on the prediction of principal strains (ϵ1 and ϵ3) was quantified for one human proximal femur, including sensitivity and reliability analysis. Large variabilities in the principal strain predictions were found in the cortical shell of the femoral neck, with coefficients of variation of ≈40%. Between 60 and 80% of the variance in ϵ1 and ϵ3 are attributable to the uncertainty in the E-ρ relationship, while ≈10% are caused by the load magnitude and 5-30% by the load direction. Principal strain directions were unaffected by material and loading uncertainties. The antero-superior and medial inferior sides of the neck exhibited the largest probabilities for tensile and compression failure, however all were very small (pf<0.001). In summary, uncertainty quantification with PC has been demonstrated to efficiently and accurately describe the influence of very different stochastic inputs, which increases the credibility and explanatory power of personalized analyses of human proximal femurs.

摘要

用于人体股骨个性化分析的计算模型在骨材料特性和载荷方面存在不确定性,这会影响模拟结果。为了量化这种影响,我们基于多项式混沌(PC)开发了一个概率框架,该框架通过任何计算模型传播随机输入变量。我们考虑了一个随机的弹性模量 - 密度(E - ρ)关系和一个随机的髋关节接触力,以代表实验数据的实际变异性。针对一个人体近端股骨,量化了它们对主应变(ϵ1和ϵ3)预测的影响,包括敏感性和可靠性分析。在股骨颈的皮质壳中发现主应变预测存在很大的变异性,变异系数约为40%。ϵ1和ϵ3中60%至80%的方差可归因于E - ρ关系的不确定性,而约10%由载荷大小引起,5%至30%由载荷方向引起。主应变方向不受材料和载荷不确定性的影响。颈部的前上侧和内侧下侧出现拉伸和压缩破坏的概率最大,但所有概率都非常小(pf < 0.001)。总之,已证明用PC进行不确定性量化能够有效且准确地描述非常不同的随机输入的影响,这增加了人体近端股骨个性化分析的可信度和解释力。

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