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Main Authors: Chen, Zihao, Zhou, Yi, Jiang, Xudong, Chen, Li, Schmetterer, Leopold, Tan, Bingyao, Cheng, Jun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.19679
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author Chen, Zihao
Zhou, Yi
Jiang, Xudong
Chen, Li
Schmetterer, Leopold
Tan, Bingyao
Cheng, Jun
author_facet Chen, Zihao
Zhou, Yi
Jiang, Xudong
Chen, Li
Schmetterer, Leopold
Tan, Bingyao
Cheng, Jun
contents Unpaired image-to-image translation has emerged as a crucial technique in medical imaging, enabling cross-modality synthesis, domain adaptation, and data augmentation without costly paired datasets. Yet, existing approaches often distort fine curvilinear structures, such as microvasculature, undermining both diagnostic reliability and quantitative analysis. This limitation is consequential in ophthalmic and vascular imaging, where subtle morphological changes carry significant clinical meaning. We propose Curvilinear Structure-preserving Translation (CST), a general framework that explicitly preserves fine curvilinear structures during unpaired translation by integrating structure consistency into the training. Specifically, CST augments baseline models with a curvilinear extraction module for topological supervision. It can be seamlessly incorporated into existing methods. We integrate it into CycleGAN and UNSB as two representative backbones. Comprehensive evaluation across three imaging modalities: optical coherence tomography angiography, color fundus and X-ray coronary angiography demonstrates that CST improves translation fidelity and achieves state-of-the-art performance. By reinforcing geometric integrity in learned mappings, CST establishes a principled pathway toward curvilinear structure-aware cross-domain translation in medical imaging.
format Preprint
id arxiv_https___arxiv_org_abs_2510_19679
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Curvilinear Structure-preserving Unpaired Cross-domain Medical Image Translation
Chen, Zihao
Zhou, Yi
Jiang, Xudong
Chen, Li
Schmetterer, Leopold
Tan, Bingyao
Cheng, Jun
Computer Vision and Pattern Recognition
Unpaired image-to-image translation has emerged as a crucial technique in medical imaging, enabling cross-modality synthesis, domain adaptation, and data augmentation without costly paired datasets. Yet, existing approaches often distort fine curvilinear structures, such as microvasculature, undermining both diagnostic reliability and quantitative analysis. This limitation is consequential in ophthalmic and vascular imaging, where subtle morphological changes carry significant clinical meaning. We propose Curvilinear Structure-preserving Translation (CST), a general framework that explicitly preserves fine curvilinear structures during unpaired translation by integrating structure consistency into the training. Specifically, CST augments baseline models with a curvilinear extraction module for topological supervision. It can be seamlessly incorporated into existing methods. We integrate it into CycleGAN and UNSB as two representative backbones. Comprehensive evaluation across three imaging modalities: optical coherence tomography angiography, color fundus and X-ray coronary angiography demonstrates that CST improves translation fidelity and achieves state-of-the-art performance. By reinforcing geometric integrity in learned mappings, CST establishes a principled pathway toward curvilinear structure-aware cross-domain translation in medical imaging.
title Curvilinear Structure-preserving Unpaired Cross-domain Medical Image Translation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.19679