首页> 外文会议>IEEE International Conference on Bioinformatics and Biomedicine >Rule-based text mining of traditional Chinese medicine patterns with Chinese herbal medicines and formulae on hypertension
【24h】

Rule-based text mining of traditional Chinese medicine patterns with Chinese herbal medicines and formulae on hypertension

机译:基于规则的中草药和高血压病中医模式文本挖掘

获取原文

摘要

Through several thousands years of clinical research and theoretical thoughts, traditional Chinese medicine (TCM) has accumulated rich experience on hypertension. However, the usage of Chinese herbal medicines (CHMs) in formulae is flexible in TCM clinical practice according to pattern differentiation. So, it is important to get the composition rules of Chinese herbal medicines through literatures. Based on the keyword list of Chinese herbal medicine, through the keyword filtering skill, we got the lists of Chinese herbal medicines. However, for Chinese herbal medicine, they are not only mentioned in the plain format of herb names, but also densely described in the form of formulae. As formulae are composed by Chinese herbal medicines according the theory of traditional Chinese medicine, so it is necessary to filtering them out and de-compose them back into specified Chinese herbal medicines. In this study, take hypertension for example, we explored the composition-rules of Chinese herbal medicines and the network of TCM pattern with them. Networks of TCM patterns and CHMs which are most frequently used in hypertension treatment are built-up and analyzed, some regularities are obtained in treating hypertension from 175011 records of literature. And this method could provide useful help for TCM clinical application and Chinese medicine research.
机译:通过数千年的临床研究和理论思考,中药(TCM)积累了丰富的高血压治疗经验。然而,根据模式的不同,配方中的中草药的使用在中医临床实践中是灵活的。因此,重要的是要通过文献了解中草药的成分规则。基于中草药的关键词列表,通过关键词过滤技术,得到了中草药的列表。但是,对于中草药,它们不仅以简单的草药名称形式被提及,而且以配方形式被密集地描述。由于配方是根据中药理论由中草药组成的,因此有必要将其过滤掉,然后分解回指定的中草药。本研究以高血压为例,探讨了中草药的成分规则及其与中医证型的关系。建立并分析了高血压治疗中最常用的中医证型和CHM网络,从175011年的文献记录中获得了一些治疗高血压的规律性。该方法可为中医药的临床应用和中药研究提供有益的帮助。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号