论文标题
使用贝叶斯编码器替代物的主动脉壁中不均匀性和不确定性定量的随机建模
Stochastic Modeling of Inhomogeneities in the Aortic Wall and Uncertainty Quantification using a Bayesian Encoder-Decoder Surrogate
论文作者
论文摘要
主动脉壁中的不均匀性会导致局部应力积累,可能引发解剖。在许多情况下,解剖是由病理变化引起的,例如破碎或弹性纤维的丧失。但是已经表明,即使健康的主动脉壁也具有固有的异质微结构。主动脉的某些部分特别容易受到病理变化引起的不均匀性发展的影响,但是,很难预测主动脉壁的分布和空间范围,例如大小,形状和类型。通过这种观察,我们描述了使用随机组成型模型在解剖壁中弹性纤维降解的异质分布。为此,在非均等网格上产生了模拟降解弹性纤维的随机分布的随机场实现。然后,随机场用作使用有限元(FE)方法解决病理主动脉壁的单轴扩展测试的输入。为了包括解剖主动脉壁的微观结构,应用了先前研究中开发的本构模型,其中还包括一种模拟层间弹性纤维降解的方法。然后,为了评估由于这种随机组成型模型引起的输出应力分布的不确定性,将卷积神经网络(特别是贝叶斯编码器)用作替代模型,该模型将随机输入场映射到FE分析获得的输出应力分布。结果表明,神经网络能够预测Fe分析的应力分布,同时显着减少了计算时间。此外,它提供了超过主动脉壁内临界应力的概率,这可以预测分层或致命破裂。
Inhomogeneities in the aortic wall can lead to localized stress accumulations, possibly initiating dissection. In many cases, a dissection results from pathological changes such as fragmentation or loss of elastic fibers. But it has been shown that even the healthy aortic wall has an inherent heterogeneous microstructure. Some parts of the aorta are particularly susceptible to the development of inhomogeneities due to pathological changes, however, the distribution in the aortic wall and the spatial extent, such as size, shape, and type, are difficult to predict. Motivated by this observation, we describe the heterogeneous distribution of elastic fiber degradation in the dissected aortic wall using a stochastic constitutive model. For this purpose, random field realizations, which model the stochastic distribution of degraded elastic fibers, are generated over a non-equidistant grid. The random field then serves as input for a uni-axial extension test of the pathological aortic wall, solved with the finite-element (FE) method. To include the microstructure of the dissected aortic wall, a constitutive model developed in a previous study is applied, which also includes an approach to model the degradation of inter-lamellar elastic fibers. Then to assess the uncertainty in the output stress distribution due to this stochastic constitutive model, a convolutional neural network, specifically a Bayesian encoder-decoder, was used as a surrogate model that maps the random input fields to the output stress distribution obtained from the FE analysis. The results show that the neural network is able to predict the stress distribution of the FE analysis while significantly reducing the computational time. In addition, it provides the probability for exceeding critical stresses within the aortic wall, which could allow for the prediction of delamination or fatal rupture.