应用链接主题模型分析中医临床证药规律

Zaixing Jiang, Xuezhong Zhou, Xiaoping Zhang, Shibo Chen
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引用次数: 25

摘要

中医是一门临床医学,主要研究人的生理、病理、疾病的诊断和治疗。中医领域大量的临床实践和理论研究积累了大量的数据。这些数据包括中医基础数据库、中医文献,以及大量的中医临床诊疗数据库或数据仓库。发现中医临床数据的隐藏规律越来越受到人们的重视。近年来,主题模型通过从语料库中提取潜在主题和重要主题,被广泛用于文本分析和信息检索。本文采用链接潜狄利克雷分配(Link Latent Dirichlet Allocation, linkda)方法,自动提取包含症状和相应草药信息的潜在主题结构。实验结果表明,具有症状的潜在主题及其相应的中药具有临床意义。此外,还将该模型与其他主题模型(如作者-主题模型)进行了比较,结果表明linkda模型得到了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using link topic model to analyze traditional Chinese Medicine Clinical symptom-herb regularities
Traditional Chinese Medicine (TCM) is a clinical medicine, which focuses on human physiology, pathology, diagnosis and treatment of diseases. Numerous clinical practice and theory research in the TCM field have accumulated huge amount of data. These data include TCM basic databases, TCM literature, as well as a large number of databases or data warehouse on TCM clinical diagnoses and treatment. More and more people pay attention to the discovery of hidden regularities of TCM clinical data. In recent years, topic model has been popularly used for text analysis and information retrieval by extracting latent and significant topics from corpus. In this paper, we apply the Link Latent Dirichlet Allocation (LinkLDA), to automatically extract the latent topic structures which contain the information of both symptoms and their corresponding herbs. By experimental results, the latent topic with symptoms and their corresponding herbs show clinical meaningful results. Furthermore, the model is also compared with other topic models, such as author-topic model, and the result of LinkLDA got better results.
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