Stochastic Modeling of Inhomogeneities in the Aortic Wall and Uncertainty Quantification using a Bayesian Encoder-Decoder Surrogate
Sascha Ranftl, Malte Rolf-Pissarczyk, Gloria Wolkerstorfer, Antonio, Pepe, Jan Egger, Wolfgang von der Linden, Gerhard A. Holzapfel

TL;DR
This paper develops a stochastic model for inhomogeneities in the aortic wall and employs a Bayesian encoder-decoder surrogate to efficiently predict stress distributions and associated uncertainties, aiding in rupture risk assessment.
Contribution
It introduces a novel combination of stochastic modeling and Bayesian neural networks to quantify uncertainty in aortic wall stress predictions.
Findings
Neural network accurately predicts FE stress distributions.
Surrogate model significantly reduces computational time.
Provides probability estimates for critical stress exceedance.
Abstract
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.…
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Taxonomy
TopicsAortic aneurysm repair treatments · Elasticity and Material Modeling · Aortic Disease and Treatment Approaches
