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首页> 外文期刊>International journal of uncertainty, fuzziness and knowledge-based systems >Rough Set Theory and Fuzzy Logic Based Warehousing of Heterogeneous Clinical Databases
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Rough Set Theory and Fuzzy Logic Based Warehousing of Heterogeneous Clinical Databases

机译:基于粗糙集理论和基于模糊逻辑的异构临床数据库仓库

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摘要

Large amounts of data about the patients with their medical conditions are presented in the Medical databases. Analyzing all these databases is one of the difficult tasks in the medical environment. In order to warehouse all these databases and to analyze the patient's condition, we need an efficient data mining technique. In this paper, an efficient data mining technique for warehousing clinical databases using Rough Set Theory (RST) and Fuzzy Logic is proposed. Our proposed methodology contains two phases - (i) Clustering and (ii) Classification. In the first phase, Rough Set Theory is used for clustering. Clustering is one of the data mining techniques for warehousing the heterogeneous data bases. Clustering technique is used to group data that have similar characteristics in the same cluster and also to group the data that have dissimilar characteristics with other clusters. After clustering the data, similar objects will be clustered in one cluster and the dissimilar objects will be clustered under another cluster. The RST can be reduced the complexity. Then in the second phase, these clusters are classified using Fuzzy Logic. Normally, Classification with Fuzzy Logic is generated more number of rules. Since the RST is utilized in our work, the classification using Fuzzy can be done with less amount of complexity. The proposed approach is evaluated using various clinical related databases from heart disease datasets - Cleveland, Switzerland and Hungarian. The performance analysis is based on Sensitivity, Specificity and Accuracy with different cluster numbers. The experimentation results show that our proposed methodology provides better accuracy result.
机译:医疗数据库中提供了大量有关患者及其医疗状况的数据。分析所有这些数据库是医疗环境中的艰巨任务之一。为了存储所有这些数据库并分析患者的病情,我们需要一种有效的数据挖掘技术。本文提出了一种基于粗糙集理论(RST)和模糊逻辑(Fuzzy Logic)的临床数据库仓储数据挖掘技术。我们提出的方法包括两个阶段-(i)聚类和(ii)分类。在第一阶段,将粗糙集理论用于聚类。集群化是用于存储异构数据库的数据挖掘技术之一。聚类技术用于在同一聚类中对具有相似特征的数据进行分组,并与其他聚类对具有不同特征的数据进行分组。在对数据进行聚类之后,相似的对象将被聚类到一个聚类中,而不同的对象将被聚类到另一个聚类下。 RST可以降低复杂度。然后在第二阶段,使用模糊逻辑对这些聚类进行分类。通常,使用模糊逻辑进行分类会生成更多规则。由于在我们的工作中使用了RST,因此可以以较少的复杂度完成使用Fuzzy的分类。使用来自心脏病数据集的各种临床相关数据库-克利夫兰,瑞士和匈牙利,对提出的方法进行了评估。性能分析基于不同簇数的敏感性,特异性和准确性。实验结果表明,我们提出的方法提供了更好的准确性结果。

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