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A new algorithm to extract hidden rules of gastric cancer data based on ontology

机译:基于本体的胃癌数据隐藏规则提取新算法

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摘要

Cancer is the leading cause of death in economically developed countries and the second leading cause of death in developing countries. Gastric cancers are among the most devastating and incurable forms of cancer and their treatment may be excessively complex and costly. Data mining, a technology that is used to produce analytically useful information, has been employed successfully with medical data. Although the use of traditional data mining techniques such as association rules helps to extract knowledge from large data sets, sometimes the results obtained from a data set are so large that it is a major problem. In fact, one of the disadvantages of this technique is a lot of nonsense and redundant rules due to the lack of attention to the concept and meaning of items or the samples. This paper presents a new method to discover association rules using ontology to solve the expressed problems. This paper reports a data mining based on ontology on a medical database containing clinical data on patients referring to the Imam Reza Hospital at Tabriz. The data set used in this paper is gathered from 490 random visitors to the Imam Reza Hospital at Tabriz, who had been suspicions of having gastric cancer. The proposed data mining algorithm based on ontology makes rules more intuitive, appealing and understandable, eliminates waste and useless rules, and as a minor result, significantly reduces Apriori algorithm running time. The experimental results confirm the efficiency and advantages of this algorithm.
机译:癌症是经济发达国家的主要死亡原因,也是发展中国家的第二大死亡原因。胃癌是最具破坏性和不可治愈的癌症之一,其治疗可能过于复杂且成本高昂。数据挖掘是一种用于产生分析上有用的信息的技术,已成功用于医疗数据。尽管使用诸如关联规则之类的传统数据挖掘技术有助于从大型数据集中提取知识,但有时从数据集中获得的结果是如此之大,以至于这是一个主要问题。实际上,由于缺乏对物品或样品的概念和含义的关注,该技术的缺点之一是许多无用和多余的规则。本文提出了一种新的利用本体发现关联规则的方法来解决所表达的问题。本文报告了基于本体的医学数据库数据挖掘,该数据库包含有关大不里士伊玛目雷扎医院患者的临床数据。本文使用的数据集来自大不里士伊马目礼萨医院的490位随机访客,他们曾怀疑患有胃癌。提出的基于本体的数据挖掘算法使规则更加直观,吸引人和易于理解,消除了浪费和无用的规则,并且作为次要结果,显着减少了Apriori算法的运行时间。实验结果证明了该算法的有效性和优势。

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