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首页> 外文期刊>Journal of computational and theoretical nanoscience >A Cervical Cancer Prediction Model Using REPTree Classifier
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A Cervical Cancer Prediction Model Using REPTree Classifier

机译:复制分类器的宫颈癌预测模型

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摘要

Cervical cancer is the foremost gynecological disease globally. In this manuscript, we build up a Cervical Cancer prediction model that can aid medical experts in envisaging Cervical Cancer condition based on the clinical data of patients. At the outset, we choose 32 imperative clinicalattributes viz., age, hormonal contraceptives, number of sexual partners, STDs: AIDS, first sexual intercourse (age), STDs: HIV, number of pregnancies, STDs: Hepatitis B, smokes etc., in addition to four classes (Hinselmann, Schiller, Cytology and Biopsy). Secondly, we build up a predictionmodel by means of REPTree classifier for classifying Cervical Cancer based on these clinical attributes against unpruned, and pruned error pruning approach. As a final point, it is concluded that the precision of unpruned REPTree classifier with Pruned REPTree classifier approach is betterthan the Pruned REPTree classifier approach. The outcome acquired that which illustrates that age, hormonal contraceptives, first sexual intercourse (age), STDs: genital herpes, number of pregnancies and smokes are the foremost predictive attributes which provides enhanced classification inopposition to the supplementary attributes.
机译:宫颈癌是全球最重要的妇科疾病。在这个手稿中,我们建立了一种宫颈癌预测模型,可以帮助医学专家在患者的临床资料中设想宫颈癌病症。首先,我们选择32个命令临床临床,年龄,激素避孕药,性伴侣数量,STDS:艾滋病,第一次性交(年龄),STDS:艾滋病毒,怀孕次数,STD:乙型肝炎,抽烟等,除了四个课堂(辛勒曼,席克曼,细胞学和活检)。其次,我们通过复制分类器来构建预测模型,用于基于这些临床属性对非普通的临床属性进行分类,并修剪误差修剪方法。作为最后一点,得出结论是,具有修剪复制分类器方法的未分级复制分类器的精度是修剪修剪的复制分类器方法。所谓的结果表明,该年龄,激素避孕药,第一次性交(年龄),STDS:生殖器疱疹,怀孕和抽烟的数量是最重要的预测属性,它为补充属性提供了增强的分类。

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