MED-VRAG reaches 78.6% average accuracy on four medical QA benchmarks by iteratively retrieving PMC page images with ColQwen2.5 embeddings and a VLM that refines queries over up to three rounds.
Rationale-guided retrieval augmented generation for medical question answering
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Iterative Multimodal Retrieval-Augmented Generation for Medical Question Answering
MED-VRAG reaches 78.6% average accuracy on four medical QA benchmarks by iteratively retrieving PMC page images with ColQwen2.5 embeddings and a VLM that refines queries over up to three rounds.