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Prior Distributions of Material Parameters for Bayesian Calibration of Growth and Remodeling Computational Model of Abdominal Aortic Wall

机译:贝叶斯生长校正和腹主动脉壁重建模型的材料参数先验分布

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For the accurate prediction of the vascular disease progression, there is a crucial need for developing a systematic tool aimed toward patient-specific modeling. Considering the interpatient variations, a prior distribution of model parameters has a strong influence on computational results for arterial mechanics. One crucial step toward patient-specific computational modeling is to identify parameters of prior distributions that reflect existing knowledge. In this paper, we present a new systematic method to estimate the prior distribution for the parameters of a constrained mixture model using previous biaxial tests of healthy abdominal aortas (AAs). We investigate the correlation between the estimated parameters for each constituent and the patient's age and gender; however, the results indicate that the parameters are correlated with age only. The parameters are classified into two groups: Group-I in which the parameters c(e), c(k1), c(k2), c(m2), G(h)(c), and phi(e) are correlated with age, and Group-II in which the parameters c(m1), G(h)(m), G(1)(e), G(2)(e), and alpha are not correlated with age. For the parameters in Group-I, we used regression associated with age via linear or inverse relations, in which their prior distributions provide conditional distributions with confidence intervals. For Group-II, the parameter estimated values were subjected to multiple transformations and chosen if the transformed data had a better fit to the normal distribution than the original. This information improves the prior distribution of a subject- specific model by specifying parameters that are correlated with age and their transformed distributions. Therefore, this study is a necessary first step in our group's approach toward a Bayesian calibration of an aortic model. The results from this study will be used as the prior information necessary for the initialization of Bayesian calibration of a computational model for future applications.
机译:为了准确预测血管疾病的进展,迫切需要开发针对患者特定模型的系统工具。考虑到患者之间的差异,模型参数的先验分布对动脉力学的计算结果有很大影响。进行针对特定患者的计算建模的关键一步是识别反映现有知识的先前分布的参数。在本文中,我们提出了一种新的系统方法,使用先前的健康腹部主动脉(AAs)双轴测试来估计约束混合物模型的参数的先验分布。我们调查每种成分的估计参数与患者年龄和性别之间的相关性;但是,结果表明这些参数仅与年龄相关。这些参数分为两组:组I,其中参数c(e),c(k1),c(k2),c(m2),G(h)(c)和phi(e)相关随年龄增长,以及其中参数c(m1),G(h)(m),G(1)(e),G(2)(e)和alpha与年龄不相关的II组。对于I组中的参数,我们使用了通过线性或逆关系与年龄相关的回归,其中它们的先验分布提供了具有置信区间的条件分布。对于第二组,参数估计值经过多次转换,并选择转换后的数据是否比原始数据更适合于正态分布。通过指定与年龄及其变换分布相关的参数,此信息可改善特定对象模型的先验分布。因此,这项研究是我们小组对主动脉模型进行贝叶斯校准的必要的第一步。这项研究的结果将用作为未来应用初始化计算模型的贝叶斯校准所需的先验信息。

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