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Qilan Xu, Tong Wu, Yiwen Wang, Xingyu Li, Heshui Yu, Shixin Cen, Zheng Li. A comprehensive review of Intelligent Question-Answering Systems in Traditional Chinese Medicine Based on LLMs[J]. Journal of Pharmaceutical Analysis. doi: 10.1016/j.jpha.2025.101406
Citation: Qilan Xu, Tong Wu, Yiwen Wang, Xingyu Li, Heshui Yu, Shixin Cen, Zheng Li. A comprehensive review of Intelligent Question-Answering Systems in Traditional Chinese Medicine Based on LLMs[J]. Journal of Pharmaceutical Analysis. doi: 10.1016/j.jpha.2025.101406

A comprehensive review of Intelligent Question-Answering Systems in Traditional Chinese Medicine Based on LLMs

doi: 10.1016/j.jpha.2025.101406
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This work was supported by the Special Project for Technological Innovation in New Productive Forces of Modern Chinese Medicines (Grant No.: 24ZXZKSY00010), Science and Technology Program of Tianjin (Grant No.: 24ZXZSSS00460).

  • Received Date: Mar. 25, 2025
  • Accepted Date: Jul. 19, 2025
  • Rev Recd Date: Jul. 02, 2025
  • Available Online: Jul. 29, 2025
  • Large language models (LLMs) are advanced deep learning models with billions or even trillions of parameters, enabling powerful natural language processing and knowledge reasoning capabilities. Their applications in the medical domain have been rapidly expanding, spanning medical research, clinical diagnosis, drug development, and patient management. As a cornerstone of China's healthcare system, traditional Chinese medicine (TCM) faces significant challenges, including difficulties in knowledge extraction, and lack of standardization. The emergence of TCM-focused LLMs presents a transformative opportunity, offering a novel technological framework to process vast amounts of TCM data, uncover hidden theoretical insights, and enhance both research and clinical applications. Despite the growing interest in AI-driven medical solutions, systematic research on LLMs in the TCM domain remains limited. This article provides a comprehensive review of LLM development, detailing their underlying mechanisms, training methodologies, and key technological advancements. It further explores the unique characteristics and diverse application scenarios of existing TCM-LLMs. Additionally, this study also conducts a horizontal comparison of the differences between intelligent question-answering (QA) systems on general LLMs and QA systems on TCM-LLMs, discusses challenges and potential risks, and offers strategic recommendations for future development. By synthesizing current advancements and addressing critical gaps, this work aims to support the continued modernization and intelligent evolution of TCM, fostering its integration into contemporary healthcare systems.
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