An Enhanced Deep Learning Approach for Vascular Wall Fracture Analysis
收藏DataCite Commons2026-04-21 更新2024-07-13 收录
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https://data.uni-hannover.de/dataset/c05a3b66-91e1-42ba-a7c4-def38947acd8
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This work outlines an efficient deep learning approach for analyzing vascular wall fractures using experimental data
with openly accessible source codes (https://doi.org/10.25835/weuhha72) for reproduction. Vascular disease remains the primary cause of death globally to this day. Tissue damage in these vascular disorders is closely tied to how the diseases
develop, which requires careful study. Therefore, the scientific community has dedicated significant efforts to capture
the properties of vessel wall fractures. The symmetry-constrained Compact Tension (symconCT) test combined with
Digital Image Correlation (DIC), enabled the study of tissue fracture in various aorta specimens under different con-
ditions. Main purpose of the experiments was to investigate the displacement and strain field ahead of the crack tip.
These experimental data were to support the development and verification of computational models. The FEM model
used the DIC information for the material parameters identification.
Traditionally, the analysis of fracture processes in biological tissues involves extensive computational and experi-
mental efforts due to the complex nature of tissue behavior under stress. These high costs have posed significant
challenges, demanding efficient solutions to accelerate research progress and reduce embedded costs.
Deep learning techniques have shown promise in overcoming these challenges by learning to indicate patterns and
relationships between the Input and Label data. In this study, we integrate deep learning methodologies with the Attention Residual U-Net architecture to predict fracture responses in porcine aorta specimens, enhanced with a Monte Carlo Dropout technique. By training the network on a sufficient amount of data, the model learns to capture the features influencing fracture progression. These parameterized datasets consist of pictures describing the evolution of tissue fracture path along with the DIC measurements. The integration of deep learning should not only enhance the predictive accuracy, but also significantly reduce the computational and experimental burden, thereby enabling a more efficient analysis of fracture response.
提供机构:
LUIS
创建时间:
2024-03-05



