CVMar 27, 2024

Unleashing the Potential of SAM for Medical Adaptation via Hierarchical Decoding

arXiv:2403.18271v178 citationsh-index: 8Has CodeCVPR
Originality Incremental advance
AI Analysis

It addresses the problem of efficient medical image segmentation for researchers and practitioners by offering a more data-efficient adaptation method, though it is incremental as it builds on SAM with specific enhancements.

This paper tackles the challenge of adapting the Segment Anything Model (SAM) for medical image segmentation by introducing H-SAM, a prompt-free method that uses hierarchical decoding to improve performance with limited data, achieving a 4.78% Dice improvement over existing prompt-free SAM variants and outperforming state-of-the-art semi-supervised models.

The Segment Anything Model (SAM) has garnered significant attention for its versatile segmentation abilities and intuitive prompt-based interface. However, its application in medical imaging presents challenges, requiring either substantial training costs and extensive medical datasets for full model fine-tuning or high-quality prompts for optimal performance. This paper introduces H-SAM: a prompt-free adaptation of SAM tailored for efficient fine-tuning of medical images via a two-stage hierarchical decoding procedure. In the initial stage, H-SAM employs SAM's original decoder to generate a prior probabilistic mask, guiding a more intricate decoding process in the second stage. Specifically, we propose two key designs: 1) A class-balanced, mask-guided self-attention mechanism addressing the unbalanced label distribution, enhancing image embedding; 2) A learnable mask cross-attention mechanism spatially modulating the interplay among different image regions based on the prior mask. Moreover, the inclusion of a hierarchical pixel decoder in H-SAM enhances its proficiency in capturing fine-grained and localized details. This approach enables SAM to effectively integrate learned medical priors, facilitating enhanced adaptation for medical image segmentation with limited samples. Our H-SAM demonstrates a 4.78% improvement in average Dice compared to existing prompt-free SAM variants for multi-organ segmentation using only 10% of 2D slices. Notably, without using any unlabeled data, H-SAM even outperforms state-of-the-art semi-supervised models relying on extensive unlabeled training data across various medical datasets. Our code is available at https://github.com/Cccccczh404/H-SAM.

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