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Predicting the existence of mycobacterium tuberculosis infection by Bayesian Networks and Rough Sets

机译:通过贝叶斯网络和粗糙集预测结核分枝杆菌感染的存在

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A correct diagnosis of tuberculosis can be only stated by applying a medical test to patient's phlegm. The result of this test is obtained after a time period of about 45 days. The purpose of this study is to develop a data mining solution which makes diagnosis of tuberculosis as accurate as possible and helps deciding if it is reasonable to start tuberculosis treatment on suspected patients without waiting the exact medical test results. In this research, we compared the use of Bayesian Networks and Rough Sets to predict the existence of mycobacterium tuberculosis. 503 different patient records having 30 separate input parameters are obtained from a private clinic and used in the entire process of this research. The Bayesian Network model classifies the instances with RMSE of 22% whereas Rough Set algorithm does the same classification with RMSE of 37%. As a result, Bayesian Network is an accurate and reliable method when compared with Rough Set method for classification of tuberculosis patients.
机译:只能通过对患者的痰液进行医学检查才能确定结核病的正确诊断。该测试的结果是在大约45天的时间段后获得的。这项研究的目的是开发一种数据挖掘解决方案,该解决方案可以使结核病的诊断尽可能准确,并有助于确定是否在不等待确切的医学检查结果的情况下开始对可疑患者进行结核病治疗的合理性。在这项研究中,我们比较了使用贝叶斯网络和粗糙集预测结核分枝杆菌的存在。从私人诊所获得503个具有30个单独输入参数的不同患者记录,并将其用于整个研究过程。贝叶斯网络模型使用22%的RMSE对实例进行分类,而粗糙集算法使用37%的RMSE进行相同的分类。因此,与粗糙集方法相比,贝叶斯网络是一种准确而可靠的方法,可以对结核病患者进行分类。

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