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Knowledge Discovery of Selection Rules for Acupuncture Points in Respiratory Diseases Therapy Based on Partial-Ordered Structure Diagrams

机译:基于偏序结构图的呼吸道疾病穴位选择规则的知识发现

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This paper presents a knowledge discovery method of selection rules for acupuncture points in respiratory diseases therapy based on the theory of Structural Partial-Ordered Attribute Diagram and association rule mining. First, we briefly introduced the basic definitions of Structural Partial-Ordered Attribute Diagram and association rule mining theory. Then, we transformed the data of a Traditional Chinese Medicine treatise into formal context and transaction database. Finally, we explained knowledge discovery process by analyzing the formal context of respiratory diseases. It was concluded that the method proposed in this paper works well in discovering new knowledge from medical treatises and clinical cases of acupuncture treatment. The method provided a scientific and advanced technological means for the heritage of Traditional Chinese Medicine.
机译:本文基于结构部分有序属性图和关联规则挖掘的理论,提出了呼吸系统疾病穴位选择规则的知识发现方法。首先,我们简要介绍了结构偏序属性图的基本定义和关联规则挖掘理论。然后,我们将中医论文的数据转换为正式的语境和交易数据库。最后,我们通过分析呼吸系统疾病的形式背景来解释知识发现过程。结论是,本文提出的方法在从医学论文和针灸治疗的临床案例中发现新知识方面非常有效。该方法为中药遗传提供了科学,先进的技术手段。

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