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Main Authors: Jain, Dhruv, Modzelewski, Romain, Herault, Romain, Chatelain, Clement, Torfeh, Eva, Thureau, Sebastien
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.18177
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author Jain, Dhruv
Modzelewski, Romain
Herault, Romain
Chatelain, Clement
Torfeh, Eva
Thureau, Sebastien
author_facet Jain, Dhruv
Modzelewski, Romain
Herault, Romain
Chatelain, Clement
Torfeh, Eva
Thureau, Sebastien
contents In data-scarce scenarios, deep learning models often overfit to noise and irrelevant patterns, which limits their ability to generalize to unseen samples. To address these challenges in medical image segmentation, we introduce Diff-UMamba, a novel architecture that combines the UNet framework with the mamba mechanism to model long-range dependencies. At the heart of Diff-UMamba is a noise reduction module, which employs a signal differencing strategy to suppress noisy or irrelevant activations within the encoder. This encourages the model to filter out spurious features and enhance task-relevant representations, thereby improving its focus on clinically significant regions. As a result, the architecture achieves improved segmentation accuracy and robustness, particularly in low-data settings. Diff-UMamba is evaluated on multiple public datasets, including medical segmentation decathalon dataset (lung and pancreas) and AIIB23, demonstrating consistent performance gains of 1-3% over baseline methods in various segmentation tasks. To further assess performance under limited data conditions, additional experiments are conducted on the BraTS-21 dataset by varying the proportion of available training samples. The approach is also validated on a small internal non-small cell lung cancer dataset for the segmentation of gross tumor volume in cone beam CT, where it achieves a 4-5% improvement over baseline.
format Preprint
id arxiv_https___arxiv_org_abs_2507_18177
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Differential-UMamba: Rethinking Tumor Segmentation Under Limited Data Scenarios
Jain, Dhruv
Modzelewski, Romain
Herault, Romain
Chatelain, Clement
Torfeh, Eva
Thureau, Sebastien
Computer Vision and Pattern Recognition
Artificial Intelligence
In data-scarce scenarios, deep learning models often overfit to noise and irrelevant patterns, which limits their ability to generalize to unseen samples. To address these challenges in medical image segmentation, we introduce Diff-UMamba, a novel architecture that combines the UNet framework with the mamba mechanism to model long-range dependencies. At the heart of Diff-UMamba is a noise reduction module, which employs a signal differencing strategy to suppress noisy or irrelevant activations within the encoder. This encourages the model to filter out spurious features and enhance task-relevant representations, thereby improving its focus on clinically significant regions. As a result, the architecture achieves improved segmentation accuracy and robustness, particularly in low-data settings. Diff-UMamba is evaluated on multiple public datasets, including medical segmentation decathalon dataset (lung and pancreas) and AIIB23, demonstrating consistent performance gains of 1-3% over baseline methods in various segmentation tasks. To further assess performance under limited data conditions, additional experiments are conducted on the BraTS-21 dataset by varying the proportion of available training samples. The approach is also validated on a small internal non-small cell lung cancer dataset for the segmentation of gross tumor volume in cone beam CT, where it achieves a 4-5% improvement over baseline.
title Differential-UMamba: Rethinking Tumor Segmentation Under Limited Data Scenarios
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2507.18177