Neural operator learning of heterogeneous mechanobiological insults contributing to aortic aneurysms
Somdatta Goswami, David S. Li, Bruno V. Rego, Marcos Latorre, Jay D., Humphrey, George Em Karniadakis

TL;DR
This paper develops a neural operator learning framework using DeepONet to predict and analyze the mechanobiological factors contributing to thoracic aortic aneurysms, enabling personalized assessment from imaging data.
Contribution
It introduces a novel DeepONet-based surrogate model trained on FE datasets to identify aortic insults and predict their progression, improving personalized TAA risk assessment.
Findings
High accuracy in predicting insult profiles from full-field images
Effective differentiation of complex and fusiform insult distributions
DeepONet models outperform sparse data approaches
Abstract
Thoracic aortic aneurysm (TAA) is a localized dilatation of the aorta resulting from compromised wall composition, structure, and function, which can lead to life-threatening dissection or rupture. Several genetic mutations and predisposing factors that contribute to TAA have been studied in mouse models to characterize specific changes in aortic microstructure and material properties that result from a wide range of mechanobiological insults. Assessments of TAA progression in vivo is largely limited to measurements of aneurysm size and growth rate. It has been shown that aortic geometry alone is not sufficient to predict the patient-specific progression of TAA but computational modeling of the evolving biomechanics of the aorta could predict future geometry and properties from initiating insults. In this work, we present an integrated framework to train a deep operator network…
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Taxonomy
TopicsAortic aneurysm repair treatments · Aortic Disease and Treatment Approaches · Elasticity and Material Modeling
