MedPruner: Training-Free Hierarchical Token Pruning for Efficient 3D Medical Image Understanding in Vision-Language Models
arXiv cs.CV / 3/13/2026
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Key Points
- MedPruner introduces a training-free, model-agnostic hierarchical token pruning framework to reduce computational cost in 3D medical image understanding within vision-language models.
- It features a two-stage approach: Inter-slice Anchor-based Filtering to remove slice-level redundancy and Dynamic Information Nucleus Selection for adaptive token-level compression.
- Across three 3D medical benchmarks and three VLMs, the method reveals significant token redundancy in existing architectures and can reduce visual tokens to under 5% while preserving or improving performance.
- The authors claim the method enables practical clinical deployment and will release code.
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