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Discovery of Hidden Patterns in Breast Cancer Patients, Using Data Mining on a Real Data Set

机译:发现乳腺癌患者隐患模式,在真实数据集上挖掘

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The aim is to recognize the unknown atterns in a real breast cancer datasel using data mining algorithms as a new method in medicine. Due to excessive missing data in the collection only data on 665 of 809 patients were available. The other missing values were estimated using the EM algorithm in SPSS21 software. Fields have been converted into discrete fields and finally the APRIORI algorithm has been used to analyze and explore the unknown patterns. After the rule extraction, experts in the Geld of breast cancer eliminated redundant and meaningless relations. 100 association rules with a confidence value of more than 0.9 explored by the APRIORI algorithm and after the clinical expert feedback, 10 clinically meaningful relations have been delected and reported. Due to the high number of risk factors, the use of data mining is effective for cancer data. These patterns provide the future study hypotheses of specific clinical studies.
机译:目的是使用数据挖掘算法作为一种新的医学方法识别真正的乳腺癌数据中未知的atterns。由于集合中的过度缺失数据,只有809名患者的665名患者的数据。使用SPSS21软件中的EM算法估计其他缺失值。字段已被转换为离散领域,最后,APRiori算法已被用于分析和探索未知模式。在规则提取后,乳腺癌束的专家消除了多余和无意义的关系。 100个关联规则具有置信度值超过0.9的APRIORI算法和临床专家反馈后,已经确定并报告了10个临床有意义的关系。由于风险因素数量大,数据挖掘的使用对癌症数据有效。这些模式提供了特定临床研究的未来研究假设。

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    《ICIMTH》|2019年|xv 404 p. :|共4页
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    Alireza ATASHP;

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  • 中图分类 R-058;
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