C-PATH: Conversational Patient Assistance and Triage in Healthcare System
C-PATH: Conversational Patient Assistance and Triage in Healthcare System
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.
Qi Shi、Qiwei Han、Cláudia Soares
医学现状、医学发展计算技术、计算机技术
Qi Shi,Qiwei Han,Cláudia Soares.C-PATH: Conversational Patient Assistance and Triage in Healthcare System[EB/OL].(2025-06-07)[2025-07-20].https://arxiv.org/abs/2506.06737.点此复制
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