CoDA: Exploring Chain-of-Distribution Attacks and Post-Hoc Token-Space Repair for Medical Vision-Language Models
arXiv cs.CV / 3/20/2026
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Key Points
- The paper introduces CoDA, a chain-of-distribution framework that constructs clinically plausible pipeline shifts by composing acquisition-like shading, reconstruction and display remapping, and delivery degradations to stress MVLMs in radiology workflows.
- Across brain MRI, chest X-ray, and abdominal CT, CoDA shows that chained stage degradations substantially degrade zero-shot CLIP-style MVLM performance, more than any single-stage alteration.
- The authors evaluate multimodal LLMs as technical-authenticity auditors of imaging realism, finding degraded auditing reliability and persistent high-confidence errors on CoDA-shifted samples.
- They also propose a post-hoc repair strategy based on teacher-guided token-space adaptation with patch-level alignment that improves accuracy on archived CoDA outputs, highlighting the value of lightweight alignment for deployment robustness.
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