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A hierarchical symptom-herb topic model for analyzing traditional Chinese medicine clinical diabetic data

机译:用于分析中药临床糖尿病数据的分层症状-草药主题模型

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Traditional Chinese medicine (TCM) is a clinical medicine. The huge clinical data from the daily clinical process which keeps to TCM theories and principles, is the core empirical knowledge source for TCM research. Induction of the common knowledge or regularities from the large-scale clinical data is a vital task for both theoretical and clinical research of TCM. Topic model have recently shown much success for text analysis and information retrieval by extracting latent topics from text collection. In this paper, we propose a hierarchical symptom-herb topic model (HSHT), to automatically extract the hierarchical latent topic structures with both symptoms and their corresponding herbs in the TCM clinical data. The HSHT model is one of the extensions of hierarchical latent Dirichlet allocation model (hLDA) and Link latent Dirichlet allocation (LinkLDA). The proposed HSHT model is used for extracting the hierarchical structure of symptoms with their corresponding herbs in clinical type 2 diabetes mellitus (T2DM). We get one meaningful super-topic with common symptoms and commonly used herbs and some meaningful subtopics denoted T2DM complications with corresponding symptoms and their commonly used herbs. The results indicate some important medical groups corresponding to the companioned diseases in the T2DM inpatients. And then the results show that there exactly exist TCM diagnosis and treatment sub-categories and the personalized therapies to T2DM. Furthermore, it manifested that the HSHT model is useful for establishing of the TCM clinical guidelines based on the TCM clinical data.
机译:中药(TCM)是一种临床医学。从日常临床过程中获得的大量临床数据一直保持着中医理论和原则,是中医研究的核心经验知识来源。从大规模临床数据中得出常识或规律性是中医理论和临床研究的重要任务。通过从文本集合中提取潜在主题,主题模型最近在文本分析和信息检索方面显示出了巨大的成功。在本文中,我们提出了一种分层的症状-草药主题模型(HSHT),以自动从中医临床数据中提取具有症状及其相应草药的分层潜在主题结构。 HSHT模型是分层潜在Dirichlet分配模型(hLDA)和链接潜在Dirichlet分配(LinkLDA)的扩展之一。提出的HSHT模型用于提取2型糖尿病(T2DM)临床症状及其相应草药的分层结构。我们得到一个具有常见症状和常用草药的有意义的超级主题,以及一些具有相应症状和其常用草药的表示为T2DM并发症的有意义的子主题。结果表明,与T2DM住院患者的伴随疾病相对应的一些重要医学类别。然后结果表明,确实存在中医诊断和治疗子类别以及针对T2DM的个性化疗法。此外,它表明,HSHT模型对于基于中医临床数据建立中医临床指南很有用。

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