C-PATH: Conversational Patient Assistance and Triage in Healthcare System
Journal:
arXiv
Published Date:
Jun 7, 2025
Abstract
Navigating healthcare systems can be complex and overwhelming, creating
barriers for patients seeking timely and appropriate medical attention. In this
paper, we introduce C-PATH (Conversational Patient Assistance and Triage in
Healthcare), a novel conversational AI system powered by large language models
(LLMs) designed to assist patients in recognizing symptoms and recommending
appropriate medical departments through natural, multi-turn dialogues. C-PATH
is fine-tuned on medical knowledge, dialogue data, and clinical summaries using
a multi-stage pipeline built on the LLaMA3 architecture. A core contribution of
this work is a GPT-based data augmentation framework that transforms structured
clinical knowledge from DDXPlus into lay-person-friendly conversations,
allowing alignment with patient communication norms. We also implement a
scalable conversation history management strategy to ensure long-range
coherence. Evaluation with GPTScore demonstrates strong performance across
dimensions such as clarity, informativeness, and recommendation accuracy.
Quantitative benchmarks show that C-PATH achieves superior performance in
GPT-rewritten conversational datasets, significantly outperforming
domain-specific baselines. C-PATH represents a step forward in the development
of user-centric, accessible, and accurate AI tools for digital health
assistance and triage.