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Guideline2Graph: Profile-Aware Multimodal Parsing for Executable Clinical Decision Graphs

Computer Vision and Pattern Recognition 2026-04-06 v1 Machine Learning

Abstract

Clinical practice guidelines are long, multimodal documents whose branching recommendations are difficult to convert into executable clinical decision support (CDS), and one-shot parsing often breaks cross-page continuity. Recent LLM/VLM extractors are mostly local or text-centric, under-specifying section interfaces and failing to consolidate cross-page control flow across full documents into one coherent decision graph. We present a decomposition-first pipeline that converts full-guideline evidence into an executable clinical decision graph through topology-aware chunking, interface-constrained chunk graph generation, and provenance-preserving global aggregation. Rather than relying on single-pass generation, the pipeline uses explicit entry/terminal interfaces and semantic deduplication to preserve cross-page continuity while keeping the induced control flow auditable and structurally consistent. We evaluate on an adjudicated prostate-guideline benchmark with matched inputs and the same underlying VLM backbone across compared methods. On the complete merged graph, our approach improves edge and triplet precision/recall from 19.6%/16.1%19.6\%/16.1\% in existing models to 69.0%/87.5%69.0\%/87.5\%, while node recall rises from 78.1%78.1\% to 93.8%93.8\%. These results support decomposition-first, auditable guideline-to-CDS conversion on this benchmark, while current evidence remains limited to one adjudicated prostate guideline and motivates broader multi-guideline validation.

Keywords

Cite

@article{arxiv.2604.02477,
  title  = {Guideline2Graph: Profile-Aware Multimodal Parsing for Executable Clinical Decision Graphs},
  author = {Onur Selim Kilic and Yeti Z. Gurbuz and Cem O. Yaldiz and Afra Nawar and Etrit Haxholli and Ogul Can and Eli Waxman},
  journal= {arXiv preprint arXiv:2604.02477},
  year   = {2026}
}
R2 v1 2026-07-01T11:51:53.300Z