数据驱动的中医临床中草药建模与中草药配对推荐

Gansen Zhao, Xutian Zhuang, Xinming Wang, Weimin Ning, Zijing Li, Jianfei Wang, Qiang Chen, Zefeng Mo, Bingchuan Chen, Huiyan Chen
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引用次数: 6

摘要

中医药作为医学领域的一个重要分支,在数据挖掘研究中不断被探索。利用机器学习模型和深度学习方法,研究人员深入研究症状分析、疾病预测和医学规律。中药配伍是临床配伍的重要依据,其研究一直备受关注。然而,据我们所知,关于临床诊断中草药推荐的文献略显缺乏。医生在选择临床药材搭配时,不仅要考虑药材的特性和药效,还要考虑与其他药材形成的相互作用。本文以临床真实处方数据为基础,构建了表征方药与证候关系的分析模型,并建立了中药推荐模型。首先,通过构建基于LDA主题模型的建模过程,给出了方剂的分析模型和表示方法。在此基础上,提出了一种双端融合推荐框架,包括权重调整方法和相似度重映射方法。本研究对相关门诊病案数据进行了实验,实验结果表明,所提出的模型能较好地反映临床诊断中草药结合的基本原则,所提出的融合推荐模型在评价指标上具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Traditional Chinese Medicine Clinical Herb Modeling and Herb Pair Recommendation
As an important branch of medical field, Traditional Chinese Medicine(TCM) continues to be explored in data mining research. Taking advantage of machine learning models and deep learning methods, researchers dive into symptom analysis, disease prediction and medicine law. The combination of TCM herbs is the essential basis for compatibility of clinical prescriptions and its research has attracted plenty of attention. However, literature on herb recommendation for clinical diagnosis, to our best knowledge, is slightly lacking. The clinical herbs collocation will be chosen by doctors in consideration of not only the characteristics and pharmacodynamics of the herbs, but also the mutual effects formed with other herbs. Based on the real clinical prescription data, this paper constructs an analytical model to represent the relationship between prescription herbs and syndromes, and develops herb recommendation model. Firstly, by constructing a modeling process based on the LDA topic model, this paper shows the analysis model and presentation method for prescription herbs. Then, based on the mentioned modeling, we propose a doubleend fusion recommendation framework, including methods of adjusting weight proportion and similarity remapping. This research conducts experiments on relevant outpatient medical record data, which confirm that the proposed model can reflect the basic principles of herb combination in clinical diagnosis and the proposed fusion recommendation model has good performance in evaluation metrics.
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