CVAIApr 20

Is SAM3 ready for pathology segmentation?

arXiv:2604.1822575.2h-index: 4
Predicted impact top 35% in CV · last 90 daysOriginality Synthesis-oriented
AI Analysis

For researchers applying foundation models to medical imaging, this paper provides a systematic evaluation revealing SAM3's limitations in pathology segmentation and the need for domain adaptation.

The paper evaluates SAM3's capability for pathology image segmentation across tissue and nuclei scales, finding that text-only prompts fail for nuclear concepts, performance is sensitive to visual prompt types, few-shot learning offers limited gains, and a significant gap remains compared to task-trained adapters.

Is Segment Anything Model 3 (SAM3) capable in segmenting Any Pathology Images? Digital pathology segmentation spans tissue-level and nuclei-level scales, where traditional methods often suffer from high annotation costs and poor generalization. SAM3 introduces Promptable Concept Segmentation, offering a potential automated interface via text prompts. With this work, we propose a systematic evaluation protocol to explore the capability space of SAM3 in a structured manner. Specifically, we evaluate SAM3 under different supervision settings including zero-shot, few-shot, and supervised with varying prompting strategies. Our extensive evaluation on pathological datasets including NuInsSeg, PanNuke and GlaS, reveals that: 1.text-only prompts poorly activate nuclear concepts. 2.performance is highly sensitive to visual prompt types and budgets. 3.few-shot learning offers gains, but SAM3 lacks robustness against visual prompt noise. and 4.a significant gap persists between prompt-based usage and task-trained adapter-based reference. Our study delineates SAM3's boundaries in pathology image segmentation and provides practical guidance on the necessity of pathology domain adaptation.

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