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Auteurs principaux: Tsai, Ting Yu, Gui, Liangqiao, Chen, Yineng, Lin, Li, Hu, Shu, Tsao, Connie W., Li, Xin, Lin, Shao, Chang, Ming-Ching, Zhu, Hongtu, Wang, Xin
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2409.14305
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author Tsai, Ting Yu
Gui, Liangqiao
Chen, Yineng
Lin, Li
Hu, Shu
Tsao, Connie W.
Li, Xin
Lin, Shao
Chang, Ming-Ching
Zhu, Hongtu
Wang, Xin
author_facet Tsai, Ting Yu
Gui, Liangqiao
Chen, Yineng
Lin, Li
Hu, Shu
Tsao, Connie W.
Li, Xin
Lin, Shao
Chang, Ming-Ching
Zhu, Hongtu
Wang, Xin
contents Deep learning models have achieved significant success in segmenting cardiovascular structures, but there is a growing need to improve their generalization and robustness. Current methods often face challenges such as overfitting and limited accuracy, largely due to their reliance on large annotated datasets and limited optimization techniques. This paper introduces the UU-Mamba model, an extension of the U-Mamba architecture, designed to address these challenges in both cardiac and vascular segmentation. By incorporating Sharpness-Aware Minimization (SAM), the model enhances generalization by seeking flatter minima in the loss landscape. Additionally, we propose an uncertainty-aware loss function that integrates region-based, distribution-based, and pixel-based components, improving segmentation accuracy by capturing both local and global features. We expand our evaluations on the ImageCAS (coronary artery) and Aorta (aortic branches and zones) datasets, which present more complex segmentation challenges than the ACDC dataset (left and right ventricles) used in prior work, showcasing the model's adaptability and resilience. Our results confirm UU-Mamba's superior performance compared to leading models such as TransUNet, Swin-Unet, nnUNet, and nnFormer. We also provide a more in-depth assessment of the model's robustness and segmentation accuracy through extensive experiments.
format Preprint
id arxiv_https___arxiv_org_abs_2409_14305
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An Uncertainty-Aware Generalization Framework for Cardiovascular Image Segmentation
Tsai, Ting Yu
Gui, Liangqiao
Chen, Yineng
Lin, Li
Hu, Shu
Tsao, Connie W.
Li, Xin
Lin, Shao
Chang, Ming-Ching
Zhu, Hongtu
Wang, Xin
Artificial Intelligence
Deep learning models have achieved significant success in segmenting cardiovascular structures, but there is a growing need to improve their generalization and robustness. Current methods often face challenges such as overfitting and limited accuracy, largely due to their reliance on large annotated datasets and limited optimization techniques. This paper introduces the UU-Mamba model, an extension of the U-Mamba architecture, designed to address these challenges in both cardiac and vascular segmentation. By incorporating Sharpness-Aware Minimization (SAM), the model enhances generalization by seeking flatter minima in the loss landscape. Additionally, we propose an uncertainty-aware loss function that integrates region-based, distribution-based, and pixel-based components, improving segmentation accuracy by capturing both local and global features. We expand our evaluations on the ImageCAS (coronary artery) and Aorta (aortic branches and zones) datasets, which present more complex segmentation challenges than the ACDC dataset (left and right ventricles) used in prior work, showcasing the model's adaptability and resilience. Our results confirm UU-Mamba's superior performance compared to leading models such as TransUNet, Swin-Unet, nnUNet, and nnFormer. We also provide a more in-depth assessment of the model's robustness and segmentation accuracy through extensive experiments.
title An Uncertainty-Aware Generalization Framework for Cardiovascular Image Segmentation
topic Artificial Intelligence
url https://arxiv.org/abs/2409.14305