Department of Pharmacy, Beijing Shijitan Hospital, Beijing 100038, China; E-mail:
J Integr Med. 2013 Sep;11(5):352-65. doi: 10.3736/jintegrmed2013051.
Knowledge Discovery in Databases is gaining attention and raising new hopes for traditional Chinese medicine (TCM) researchers. It is a useful tool in understanding and deciphering TCM theories. Aiming for a better understanding of Chinese herbal property theory (CHPT), this paper performed an improved association rule learning to analyze semistructured text in the book entitled Shennong's Classic of Materia Medica. The text was firstly annotated and transformed to well-structured multidimensional data. Subsequently, an Apriori algorithm was employed for producing association rules after the sensitivity analysis of parameters. From the confirmed 120 resulting rules that described the intrinsic relationships between herbal property (qi, flavor and their combinations) and herbal efficacy, two novel fundamental principles underlying CHPT were acquired and further elucidated: (1) the many-to-one mapping of herbal efficacy to herbal property; (2) the nonrandom overlap between the related efficacy of qi and flavor. This work provided an innovative knowledge about CHPT, which would be helpful for its modern research.
数据库中的知识发现正引起传统中医药(TCM)研究人员的关注并带来新的希望。它是理解和破译 TCM 理论的有用工具。为了更好地理解中药药性理论(CHPT),本文采用改进的关联规则学习方法,对《神农本草经》一书中的半结构化文本进行了分析。文本首先进行了注释,并转换为结构良好的多维数据。然后,在对参数进行敏感性分析后,采用 Apriori 算法生成关联规则。从描述药性(气、味及其组合)与草药功效之间内在关系的 120 条确定规则中,获得了 CHPT 的两个新的基本原理,并进一步阐明:(1)草药功效到草药药性的多对一映射;(2)气与味的相关功效之间的非随机重叠。这项工作为 CHPT 提供了有关其的创新性知识,这将有助于其现代研究。