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Main Authors: Zhu, Zhiyuan, Wang, Jian, Jiang, Yong, Han, Tong, Huang, Yuhao, Zhang, Ang, Yang, Kaiwen, Luo, Mingyuan, Liu, Zhe, Duan, Yaofei, Ni, Dong, Tang, Tianhong, Yang, Xin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.23108
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author Zhu, Zhiyuan
Wang, Jian
Jiang, Yong
Han, Tong
Huang, Yuhao
Zhang, Ang
Yang, Kaiwen
Luo, Mingyuan
Liu, Zhe
Duan, Yaofei
Ni, Dong
Tang, Tianhong
Yang, Xin
author_facet Zhu, Zhiyuan
Wang, Jian
Jiang, Yong
Han, Tong
Huang, Yuhao
Zhang, Ang
Yang, Kaiwen
Luo, Mingyuan
Liu, Zhe
Duan, Yaofei
Ni, Dong
Tang, Tianhong
Yang, Xin
contents Accurate carotid plaque grading (CPG) is vital to assess the risk of cardiovascular and cerebrovascular diseases. Due to the small size and high intra-class variability of plaque, CPG is commonly evaluated using a combination of transverse and longitudinal ultrasound views in clinical practice. However, most existing deep learning-based multi-view classification methods focus on feature fusion across different views, neglecting the importance of representation learning and the difference in class features. To address these issues, we propose a novel Corpus-View-Category Refinement Framework (CVC-RF) that processes information from Corpus-, View-, and Category-levels, enhancing model performance. Our contribution is four-fold. First, to the best of our knowledge, we are the foremost deep learning-based method for CPG according to the latest Carotid Plaque-RADS guidelines. Second, we propose a novel center-memory contrastive loss, which enhances the network's global modeling capability by comparing with representative cluster centers and diverse negative samples at the Corpus level. Third, we design a cascaded down-sampling attention module to fuse multi-scale information and achieve implicit feature interaction at the View level. Finally, a parameter-free mixture-of-experts weighting strategy is introduced to leverage class clustering knowledge to weight different experts, enabling feature decoupling at the Category level. Experimental results indicate that CVC-RF effectively models global features via multi-level refinement, achieving state-of-the-art performance in the challenging CPG task.
format Preprint
id arxiv_https___arxiv_org_abs_2506_23108
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hierarchical Corpus-View-Category Refinement for Carotid Plaque Risk Grading in Ultrasound
Zhu, Zhiyuan
Wang, Jian
Jiang, Yong
Han, Tong
Huang, Yuhao
Zhang, Ang
Yang, Kaiwen
Luo, Mingyuan
Liu, Zhe
Duan, Yaofei
Ni, Dong
Tang, Tianhong
Yang, Xin
Computer Vision and Pattern Recognition
Accurate carotid plaque grading (CPG) is vital to assess the risk of cardiovascular and cerebrovascular diseases. Due to the small size and high intra-class variability of plaque, CPG is commonly evaluated using a combination of transverse and longitudinal ultrasound views in clinical practice. However, most existing deep learning-based multi-view classification methods focus on feature fusion across different views, neglecting the importance of representation learning and the difference in class features. To address these issues, we propose a novel Corpus-View-Category Refinement Framework (CVC-RF) that processes information from Corpus-, View-, and Category-levels, enhancing model performance. Our contribution is four-fold. First, to the best of our knowledge, we are the foremost deep learning-based method for CPG according to the latest Carotid Plaque-RADS guidelines. Second, we propose a novel center-memory contrastive loss, which enhances the network's global modeling capability by comparing with representative cluster centers and diverse negative samples at the Corpus level. Third, we design a cascaded down-sampling attention module to fuse multi-scale information and achieve implicit feature interaction at the View level. Finally, a parameter-free mixture-of-experts weighting strategy is introduced to leverage class clustering knowledge to weight different experts, enabling feature decoupling at the Category level. Experimental results indicate that CVC-RF effectively models global features via multi-level refinement, achieving state-of-the-art performance in the challenging CPG task.
title Hierarchical Corpus-View-Category Refinement for Carotid Plaque Risk Grading in Ultrasound
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.23108