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Knowledge discovery in medical datasets using a Fuzzy Logic rule based classifier

机译:使用基于模糊逻辑规则的分类器在医学数据集中进行知识发现

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In the healthcare sector quality demands are rising for designing expert systems for medical diagnosis. At the same time growing capture of biological, clinical, administrative data and integration of distributed and heterogeneous databases create a completely new base for medical quality and cost management. Against this background we applied intelligent data mining methods for analyzing medical repositories. This paper thus assess the role of the data mining techniques namely Fuzzy Logic rule based classifier in the diagnosis of severity of appendicitis in patients presenting with right iliac fossa (RIF) pain. It is based on the statistics already collected about the presence of appendicitis from patients data set of around 2230 data sets collected from BHEL Hospital, Tiruchirappalli. The conclusion is that Fuzzy logic rule based classifiers can be used an effective tool for accurately diagnosing the severity of appendicitis.
机译:在医疗保健领域,对设计用于医学诊断的专家系统的质量要求不断提高。同时,越来越多的生物,临床,行政数据捕获以及分布式和异构数据库的集成为医疗质量和成本管理创造了全新的基础。在这种背景下,我们应用了智能数据挖掘方法来分析医疗库。因此,本文评估了数据挖掘技术(即基于模糊逻辑规则的分类器)在患有右right窝疼痛(RIF)的患者的阑尾炎严重程度的诊断中的作用。它基于已经从Tiruchirappalli BHEL医院收集的大约2230个患者数据集中已经收集的关于阑尾炎存在的统计数据。结论是基于模糊逻辑规则的分类器可以用作准确诊断阑尾炎严重程度的有效工具。

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