Prototype-Based Knowledge Guidance for Fine-Grained Structured Radiology Reporting
arXiv cs.AI / 3/13/2026
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Key Points
- ProtoSR integrates free-text derived knowledge into structured radiology reporting by using a multimodal knowledge base of visual prototypes aligned with the reporting template.
- The approach automatically extracts knowledge from 80k+ MIMIC-CXR studies using an instruction-tuned LLM to populate the knowledge base.
- ProtoSR retrieves relevant prototypes for a given image-question pair and augments predictions with a prototype-conditioned residual, acting as a data-driven second opinion.
- On the Rad-ReStruct benchmark, ProtoSR achieves state-of-the-art results, with the largest gains for detailed attribute questions, demonstrating the value of leveraging unstructured text signals for fine-grained image understanding.
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