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UniUSNet: A Promptable Framework for Universal Ultrasound Disease Prediction and Tissue Segmentation

Authors :
Lin, Zehui
Zhang, Zhuoneng
Hu, Xindi
Gao, Zhifan
Yang, Xin
Sun, Yue
Ni, Dong
Tan, Tao
Publication Year :
2024

Abstract

Ultrasound is widely used in clinical practice due to its affordability, portability, and safety. However, current AI research often overlooks combined disease prediction and tissue segmentation. We propose UniUSNet, a universal framework for ultrasound image classification and segmentation. This model handles various ultrasound types, anatomical positions, and input formats, excelling in both segmentation and classification tasks. Trained on a comprehensive dataset with over 9.7K annotations from 7 distinct anatomical positions, our model matches state-of-the-art performance and surpasses single-dataset and ablated models. Zero-shot and fine-tuning experiments show strong generalization and adaptability with minimal fine-tuning. We plan to expand our dataset and refine the prompting mechanism, with model weights and code available at (https://github.com/Zehui-Lin/UniUSNet).<br />Comment: Accepted to BIBM 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.01154
Document Type :
Working Paper