TCM-DiffRAG: Personalized Syndrome Differentiation Reasoning Method for Traditional Chinese Medicine based on Knowledge Graph and Chain of Thought
Jianmin Li, Ying Chang, Su-Kit Tang, Yujia Liu, Yanwen Wang, Shuyuan Lin, Binkai Ou

TL;DR
This paper introduces TCM-DiffRAG, a novel retrieval augmented generation framework that combines knowledge graphs and chain of thought reasoning to improve TCM diagnosis accuracy with large language models.
Contribution
The study develops an innovative RAG framework tailored for TCM, integrating knowledge graphs and reasoning chains to enhance diagnostic performance.
Findings
Significant performance improvements over native LLMs.
Outperforms supervised fine-tuned LLMs and benchmark RAG methods.
Effective in personalized TCM diagnosis tasks.
Abstract
Background: Retrieval augmented generation (RAG) technology can empower large language models (LLMs) to generate more accurate, professional, and timely responses without fine tuning. However, due to the complex reasoning processes and substantial individual differences involved in traditional Chinese medicine (TCM) clinical diagnosis and treatment, traditional RAG methods often exhibit poor performance in this domain. Objective: To address the limitations of conventional RAG approaches in TCM applications, this study aims to develop an improved RAG framework tailored to the characteristics of TCM reasoning. Methods: We developed TCM-DiffRAG, an innovative RAG framework that integrates knowledge graphs (KG) with chains of thought (CoT). TCM-DiffRAG was evaluated on three distinctive TCM test datasets. Results: The experimental results demonstrated that TCM-DiffRAG achieved significant…
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Taxonomy
TopicsTraditional Chinese Medicine Studies · Machine Learning in Healthcare · Biomedical Text Mining and Ontologies
