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STPNet: Scale-aware Text Prompt Network for Medical Image Segmentation

2 April 2025
Dandan Shan
Zihan Li
Yunxiang Li
Qingde Li
Jie Tian
Qingqi Hong
    MedIm
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Abstract

Accurate segmentation of lesions plays a critical role in medical image analysis and diagnosis. Traditional segmentation approaches that rely solely on visual features often struggle with the inherent uncertainty in lesion distribution and size. To address these issues, we propose STPNet, a Scale-aware Text Prompt Network that leverages vision-language modeling to enhance medical image segmentation. Our approach utilizes multi-scale textual descriptions to guide lesion localization and employs retrieval-segmentation joint learning to bridge the semantic gap between visual and linguistic modalities. Crucially, STPNet retrieves relevant textual information from a specialized medical text repository during training, eliminating the need for text input during inference while retaining the benefits of cross-modal learning. We evaluate STPNet on three datasets: COVID-Xray, COVID-CT, and Kvasir-SEG. Experimental results show that our vision-language approach outperforms state-of-the-art segmentation methods, demonstrating the effectiveness of incorporating textual semantic knowledge into medical image analysis. The code has been made publicly onthis https URL.

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@article{shan2025_2504.01561,
  title={ STPNet: Scale-aware Text Prompt Network for Medical Image Segmentation },
  author={ Dandan Shan and Zihan Li and Yunxiang Li and Qingde Li and Jie Tian and Qingqi Hong },
  journal={arXiv preprint arXiv:2504.01561},
  year={ 2025 }
}
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