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

3 June 2024
Zehui Lin
Zhuoneng Zhang
Xindi Hu
Zhifan Gao
Xin Yang
Yue Sun
Dong Ni
Tao Tan
ArXiv (abs)PDFHTMLGithub (10★)
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).

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