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Data-Driven Traditional Chinese Medicine Clinical Herb Modeling and Herb Pair Recommendation

机译:数据驱动的中医临床草药建模和草药对推荐

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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 double-end 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.
机译:作为医学领域的重要分支,中医(TCM)继续在数据挖掘研究中探讨。利用机器学习模型和深度学习方法,研究人员潜入症状分析,疾病预测和医学法。中医草药的组合是临床处方兼容性的基础,其研究引起了很多关注。然而,文学对临床诊断的临床诊断推荐,略微缺乏。临床草药搭配将由医生选择,同时不仅考虑了草药的特点和药物动力学,而且是与其他草药形成的相互影响。基于真实的临床处方数据,本文构建了分析模型,以代表处方药草和综合征之间的关系,并开发草药推荐模型。首先,通过基于LDA主题模型构建建模过程,本文显示了处方草药的分析模型和呈现方法。然后,基于提到的建模,我们提出了一种双端融合推荐框架,包括调整权重比例和相似性重新映射的方法。该研究对相关的门诊病学记录数据进行了实验,这证明了拟议的模型可以反映临床诊断中的草药组合的基本原理,并且拟议的融合推荐模型具有良好的评估度量表现。

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