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The Study of the Compatibility Rules of Traditional Chinese Medicine Based on Apriori and HMETIS Hypergraph Partitioning Algorithm

机译:基于Apriori和HMETIS超图划分算法的中药相容规律研究。

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摘要

One of the major research contents carried by scholars of Traditional Chinese medical science (TCM) is to discover the compatibility rules of herbs to increase the efficacy in treating certain syndromes. However, up to now, most of the compatibility rules of herbs are based on empirical analyses, which make them hard to study. Since concepts of Big Data and machine learning have been popularized gradually, how to use data mining techniques to effectively figure out core herbs and compatibility rules becomes the main research aspect of TCM informatics. In this paper, the hypergraph partitioning algorithm HMETIS based on Apriori is applied to exploit and analyze clinical data about lung cancer. The result shows that all 15 Chinese herbs obtained by the algorithm accord with the core concepts of the treatment of lung cancer by experienced TCM doctors, namely replenishing nutrition, clearing heat-toxin, resolving phlegm and eliminating pathogenic factors.
机译:中医学者的主要研究内容之一是发现草药的相容性规律,以提高治疗某些综合症的功效。但是,到目前为止,草药的大多数相容性规则都是基于经验分析的,这使得它们难以研究。随着大数据和机器学习概念的逐渐普及,如何利用数据挖掘技术有效地找出核心草药和兼容性规则成为中医信息学的主要研究方向。本文采用基于Apriori的超图分割算法HMETIS来开发和分析有关肺癌的临床数据。结果表明,该算法得到的15种中草药均符合经验丰富的中医治疗肺癌的核心思想,即补充营养,清热解毒,化痰化痰,消除致病因素。

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