SPEGC: Continual Test-Time Adaptation via Semantic-Prompt-Enhanced Graph Clustering for Medical Image Segmentation
arXiv cs.CV / 3/13/2026
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Key Points
- SPEGC proposes a continual test-time adaptation framework for medical image segmentation that combines semantic-prompt-enhanced features with graph clustering.
- It uses decoupled commonality and heterogeneity prompt pools to inject global contextual information into local features, improving robustness to domain shift.
- It introduces a differentiable graph clustering solver that reframes global edge sparsification as an optimal transport problem to yield a refined high-order structural representation in an end-to-end manner.
- The robust structural representation guides model adaptation by enforcing cluster-level consistency and dynamically adjusting decision boundaries.
- Experiments on two medical image segmentation benchmarks show SPEGC outperforms state-of-the-art CTTA methods, and the code is available on GitHub.




