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Main Authors: Yang, Yuezhe, Guo, Yiyue, Cai, Wenjie, Ruan, Qingqing, Wang, Siying, Dong, Xingbo, Jin, Zhe, Dai, Yong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.07748
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author Yang, Yuezhe
Guo, Yiyue
Cai, Wenjie
Ruan, Qingqing
Wang, Siying
Dong, Xingbo
Jin, Zhe
Dai, Yong
author_facet Yang, Yuezhe
Guo, Yiyue
Cai, Wenjie
Ruan, Qingqing
Wang, Siying
Dong, Xingbo
Jin, Zhe
Dai, Yong
contents AI-assisted ultrasound video diagnosis presents new opportunities to enhance the efficiency and accuracy of medical imaging analysis. However, existing research remains limited in terms of dataset diversity, diagnostic performance, and clinical applicability. In this study, we propose \textbf{Auto-US}, an intelligent diagnosis agent that integrates ultrasound video data with clinical diagnostic text. To support this, we constructed \textbf{CUV Dataset} of 495 ultrasound videos spanning five categories and three organs, aggregated from multiple open-access sources. We developed \textbf{CTU-Net}, which achieves state-of-the-art performance in ultrasound video classification, reaching an accuracy of 86.73\% Furthermore, by incorporating large language models, Auto-US is capable of generating clinically meaningful diagnostic suggestions. The final diagnostic scores for each case exceeded 3 out of 5 and were validated by professional clinicians. These results demonstrate the effectiveness and clinical potential of Auto-US in real-world ultrasound applications. Code and data are available at: https://github.com/Bean-Young/Auto-US.
format Preprint
id arxiv_https___arxiv_org_abs_2511_07748
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Auto-US: An Ultrasound Video Diagnosis Agent Using Video Classification Framework and LLMs
Yang, Yuezhe
Guo, Yiyue
Cai, Wenjie
Ruan, Qingqing
Wang, Siying
Dong, Xingbo
Jin, Zhe
Dai, Yong
Computer Vision and Pattern Recognition
Artificial Intelligence
AI-assisted ultrasound video diagnosis presents new opportunities to enhance the efficiency and accuracy of medical imaging analysis. However, existing research remains limited in terms of dataset diversity, diagnostic performance, and clinical applicability. In this study, we propose \textbf{Auto-US}, an intelligent diagnosis agent that integrates ultrasound video data with clinical diagnostic text. To support this, we constructed \textbf{CUV Dataset} of 495 ultrasound videos spanning five categories and three organs, aggregated from multiple open-access sources. We developed \textbf{CTU-Net}, which achieves state-of-the-art performance in ultrasound video classification, reaching an accuracy of 86.73\% Furthermore, by incorporating large language models, Auto-US is capable of generating clinically meaningful diagnostic suggestions. The final diagnostic scores for each case exceeded 3 out of 5 and were validated by professional clinicians. These results demonstrate the effectiveness and clinical potential of Auto-US in real-world ultrasound applications. Code and data are available at: https://github.com/Bean-Young/Auto-US.
title Auto-US: An Ultrasound Video Diagnosis Agent Using Video Classification Framework and LLMs
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2511.07748