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Main Authors: Xu, Hao, Xue, Tengfei, Fan, Jianan, Liu, Dongnan, Chen, Yuqian, Zhang, Fan, Westin, Carl-Fredrik, Kikinis, Ron, O'Donnell, Lauren J., Cai, Weidong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.11440
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author Xu, Hao
Xue, Tengfei
Fan, Jianan
Liu, Dongnan
Chen, Yuqian
Zhang, Fan
Westin, Carl-Fredrik
Kikinis, Ron
O'Donnell, Lauren J.
Cai, Weidong
author_facet Xu, Hao
Xue, Tengfei
Fan, Jianan
Liu, Dongnan
Chen, Yuqian
Zhang, Fan
Westin, Carl-Fredrik
Kikinis, Ron
O'Donnell, Lauren J.
Cai, Weidong
contents Medical image registration is a fundamental task in medical image analysis, aiming to establish spatial correspondences between paired images. However, existing unsupervised deformable registration methods rely solely on intensity-based similarity metrics, lacking explicit anatomical knowledge, which limits their accuracy and robustness. Vision foundation models, such as the Segment Anything Model (SAM), can generate high-quality segmentation masks that provide explicit anatomical structure knowledge, addressing the limitations of traditional methods that depend only on intensity similarity. Based on this, we propose a novel SAM-assisted registration framework incorporating prototype learning and contour awareness. The framework includes: (1) Explicit anatomical information injection, where SAM-generated segmentation masks are used as auxiliary inputs throughout training and testing to ensure the consistency of anatomical information; (2) Prototype learning, which leverages segmentation masks to extract prototype features and aligns prototypes to optimize semantic correspondences between images; and (3) Contour-aware loss, a contour-aware loss is designed that leverages the edges of segmentation masks to improve the model's performance in fine-grained deformation fields. Extensive experiments demonstrate that the proposed framework significantly outperforms existing methods across multiple datasets, particularly in challenging scenarios with complex anatomical structures and ambiguous boundaries. Our code is available at https://github.com/HaoXu0507/IPMI25-SAM-Assisted-Registration.
format Preprint
id arxiv_https___arxiv_org_abs_2502_11440
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Medical Image Registration Meets Vision Foundation Model: Prototype Learning and Contour Awareness
Xu, Hao
Xue, Tengfei
Fan, Jianan
Liu, Dongnan
Chen, Yuqian
Zhang, Fan
Westin, Carl-Fredrik
Kikinis, Ron
O'Donnell, Lauren J.
Cai, Weidong
Computer Vision and Pattern Recognition
Medical image registration is a fundamental task in medical image analysis, aiming to establish spatial correspondences between paired images. However, existing unsupervised deformable registration methods rely solely on intensity-based similarity metrics, lacking explicit anatomical knowledge, which limits their accuracy and robustness. Vision foundation models, such as the Segment Anything Model (SAM), can generate high-quality segmentation masks that provide explicit anatomical structure knowledge, addressing the limitations of traditional methods that depend only on intensity similarity. Based on this, we propose a novel SAM-assisted registration framework incorporating prototype learning and contour awareness. The framework includes: (1) Explicit anatomical information injection, where SAM-generated segmentation masks are used as auxiliary inputs throughout training and testing to ensure the consistency of anatomical information; (2) Prototype learning, which leverages segmentation masks to extract prototype features and aligns prototypes to optimize semantic correspondences between images; and (3) Contour-aware loss, a contour-aware loss is designed that leverages the edges of segmentation masks to improve the model's performance in fine-grained deformation fields. Extensive experiments demonstrate that the proposed framework significantly outperforms existing methods across multiple datasets, particularly in challenging scenarios with complex anatomical structures and ambiguous boundaries. Our code is available at https://github.com/HaoXu0507/IPMI25-SAM-Assisted-Registration.
title Medical Image Registration Meets Vision Foundation Model: Prototype Learning and Contour Awareness
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2502.11440