ClinicBot: A Guideline-Grounded Clinical Chatbot with Prioritized Evidence RAG and Verifiable Citations
Navapat Nananukul, Mayank Kejriwal

TL;DR
ClinicBot is an AI-powered clinical chatbot that extracts, prioritizes, and presents guideline-based evidence with verifiable citations to support accurate medical decision-making.
Contribution
It introduces a structured guideline extraction, evidence prioritization based on clinical significance, and a web interface for trustworthy clinical support.
Findings
Demonstrates effective handling of diabetes-related clinical questions.
Provides concise, evidence-backed answers aligned with ADA standards.
Showcases scalable processing of complex clinical guidelines.
Abstract
Clinical diagnosis requires answers that are accurate, verifiable, and explicitly grounded in official guidelines. While large language models excel at natural language processing, their tendency to hallucinate undermines their utility in high-stakes medical contexts where precision is essential. Existing retrieval-augmented generation (RAG) systems treat all evidence equally, producing noisy context and generic answers misaligned with clinical practice. We present ClinicBot, an AI system that translates guideline recommendations into trustworthy clinical support through three key advances: (1) structured extraction of clinical guidelines into semantic units (recommendations, tables, definitions, narrative) with explicit provenance, (2) evidence prioritization that ranks content by clinical significance and guideline structure rather than textual similarity, and (3) a web-based…
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