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Application of Genetic Algorithm for Discovery of Core Effective Formulae in TCM Clinical Data

机译:遗传算法在中医临床数据核心有效配方发现中的应用

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摘要

Research on core and effective formulae (CEF) does not only summarize traditional Chinese medicine (TCM) treatment experience, it also helps to reveal the underlying knowledge in the formulation of a TCM prescription. In this paper, CEF discovery from tumor clinical data is discussed. The concepts of confidence, support, and effectiveness of the CEF are defined. Genetic algorithm (GA) is applied to find the CEF from a lung cancer dataset with 595 records from 161 patients. The results had 9 CEF with positive fitness values with 15 distinct herbs. The CEF have all had relative high average confidence and support. A herb-herb network was constructed and it shows that all the herbs in CEF are core herbs. The dataset was divided into CEF group and non-CEF group. The effective proportions of former group are significantly greater than those of latter group. A Synergy index (SI) was defined to evaluate the interaction between two herbs. There were 4 pairs of herbs with high SI values to indicate the synergy between the herbs. All the results agreed with the TCM theory, which demonstrates the feasibility of our approach.
机译:对核心有效配方(CEF)的研究不仅总结了中药(TCM)的治疗经验,而且还有助于揭示中药处方中的基本知识。本文讨论了从肿瘤临床数据中发现CEF。定义了CEF的信心,支持和有效性的概念。应用遗传算法(GA)从具有161位患者的595条记录的肺癌数据集中查找CEF。结果有9种CEF和15种不同草药的正适应性值。持续进修基金均拥有较高的平均信心和支持。构建了一个药草网络,表明CEF中的所有药草都是核心药草。数据集分为CEF组和非CEF组。前一组的有效比例明显大于后一组。定义了协同作用指数(SI)以评估两种草药之间的相互作用。有4对具有较高SI值的草药,以表明它们之间的协同作用。所有结果均与中医理论相符,证明了我们方法的可行性。

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