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PGP-SAM: Prototype-Guided Prompt Learning for Efficient Few-Shot Medical Image Segmentation
by
Lin, Tianyu
, Yin, Zijin
, Ma, Zhanyu
, Liang, Kongming
, Zeng, Xiangzhu
, Yan, Zhonghao
in
Datasets
/ Image segmentation
/ Medical imaging
/ Prototypes
2025
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PGP-SAM: Prototype-Guided Prompt Learning for Efficient Few-Shot Medical Image Segmentation
by
Lin, Tianyu
, Yin, Zijin
, Ma, Zhanyu
, Liang, Kongming
, Zeng, Xiangzhu
, Yan, Zhonghao
in
Datasets
/ Image segmentation
/ Medical imaging
/ Prototypes
2025
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PGP-SAM: Prototype-Guided Prompt Learning for Efficient Few-Shot Medical Image Segmentation
Paper
PGP-SAM: Prototype-Guided Prompt Learning for Efficient Few-Shot Medical Image Segmentation
2025
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Overview
The Segment Anything Model (SAM) has demonstrated strong and versatile segmentation capabilities, along with intuitive prompt-based interactions. However, customizing SAM for medical image segmentation requires massive amounts of pixel-level annotations and precise point- or box-based prompt designs. To address these challenges, we introduce PGP-SAM, a novel prototype-based few-shot tuning approach that uses limited samples to replace tedious manual prompts. Our key idea is to leverage inter- and intra-class prototypes to capture class-specific knowledge and relationships. We propose two main components: (1) a plug-and-play contextual modulation module that integrates multi-scale information, and (2) a class-guided cross-attention mechanism that fuses prototypes and features for automatic prompt generation. Experiments on a public multi-organ dataset and a private ventricle dataset demonstrate that PGP-SAM achieves superior mean Dice scores compared with existing prompt-free SAM variants, while using only 10\\% of the 2D slices.
Publisher
Cornell University Library, arXiv.org
Subject
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