中医智能诊断的跨学科融合与发展趋势:主题演变分析

Interdisciplinary integration and development trends of intelligent diagnosis in traditional Chinese medicine: a topic evolution analysis

  • 摘要:
    目的 本研究旨在通过定量主题演变分析,系统阐述中医智能诊断研究的发展脉络及跨学科融合特征,以整合现有分散的研究,揭示该领域的长期研究结构与演化规律。
    方法 本研究对中医智能诊断的中文文献进行了主题演变分析。从中国知网、万方和维普数据库中检索相关文献,时间范围从数据库创建到2025年7月3日。基于文献累积发文增长趋势与拐点检测相结合的混合分期方法,对研究时间线进行阶段划分。随后利用隐含狄利克雷分配(LDA)模型提取研究主题,并对不同阶段的研究主题进行比对与演化分析。
    结果 本研究共纳入2003—2025年发表的相关文献3 919篇,并根据数据驱动的断点检测方法,将研究轨迹划分为5个阶段。研究主题整体呈现出清晰的演进路径:从早期的基于规则的系统和舌脉图像和信号分析(2006—2010年),到基于机器学习的证候与方药建模(2011—2015年),然后是深度学习驱动的模式识别和方剂关联(2016—2020年)。自2021年以来,研究重点逐渐转向知识图谱构建、多模态信息融合及智能临床决策支持系统,且在2024—2025年间,出现了以大语言模型和智能体为代表的新型诊断框架。主题演变分析进一步揭示了证候建模和处方关联分析的持续跨阶段连续性,以及集成智能诊断平台的逐步整合。
    结论 本研究通过识别关键技术转折点与长期稳定的核心研究主题,为智能中医诊断系统的设计、知识驱动型临床决策支持工具的构建,以及人工智能模型与中医诊断思维的对齐提供了结构化参考框架。基于阶段划分的演化认知有助于指导未来方法学选择,提升模型的可解释性和临床适用性,并推动中医智能诊断由实验研究向真实临床应用转化。

     

    Abstract:
    Objective To systematically characterize the developmental trajectory and interdisciplinary integration of intelligent diagnosis in traditional Chinese medicine (TCM) through quantitative topic evolution analysis, we addressed the fragmentation of existing research and clarifying the long-term research structure and evolutionary patterns of the field.
    Methods A topic evolution analysis was performed on Chinese-language literature pertaining to intelligent diagnosis in TCM. Publications were retrieved from the China National Knowledge Infrastructure (CNKI), Wanfang Data, and China Science and Technology Journal Database (VIP), covering the period from database inception to July 3, 2025. A hybrid segmentation approach, based on cumulative publication growth trends and inflection point detection, was applied to divide the research timeline into distinct stages. Subsequently, the latent Dirichlet allocation (LDA) model was used to extract research topics, followed by alignment and evolutionary analysis of topics across different stages.
    Results A total of 3 919 publications published between 2003 and 2025 were included, and the research trajectory was divided into five stages based on data-driven breakpoint detection. The field exhibited a clear evolutionary shift from early rule-based systems and tongue-pulse image and signal analysis (2006 – 2010), to machine-learning-based syndrome and prescription modeling (2011 – 2015), followed by deep-learning-driven pattern recognition and formula association (2016 – 2020). Since 2021, research has increasingly emphasized knowledge-graph construction, multimodal integration, and intelligent clinical decision-support systems, with recent studies (2024 – 2025) showing the emergence of large language models and agent-based diagnostic frameworks. Topic evolution analysis further revealed sustained cross-stage continuity in syndrome modeling and prescription association analysis, alongside the progressive consolidation of integrated intelligent diagnostic platforms.
    Conclusion By identifying key technological transitions and persistent core research themes, our findings offer a structured reference framework for the design of intelligent diagnostic systems, the construction of knowledge-driven clinical decision-support tools, and the alignment of AI models with TCM diagnostic logic. Importantly, the stage-based evolutionary insights derived from this analysis can inform future methodological choices, improve model interpretability and clinical applicability, and support the translation of intelligent TCM diagnosis from experimental research to real-world clinical practice.

     

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