Cervical Cancer Prediction Using SMOTE Algorithm and Machine Learning Approaches

Serhat Kılıçarslan, Maruf Göğebakan, Cemil Közkurt
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Abstract

Cervical cancer is one of the most successful types of treatment when diagnosed early. In this study, it is aimed to find and classify the disease with data mining methods on the digitized data set obtained as a result of the pap-smear test. Two-stage architecture has been proposed for the diagnosis of cervical cancer. In the first stage of the study, missing data were extracted from the used dataset, and in the second stage, a new dataset was obtained by using the Synthetic Minority Oversampling Technique (SMOTE) algorithm to balance the target classes in the dataset. By applying the majority voting (MV) method to the dataset used in the study, the structure with 4 target variables was reduced to a single target variable. On two data sets, Artificial Neural Network (ANN), Support Vector Machines (SVM), Decision Trees (DT), Random Forest (RF), and K-Nearest Neighbors (KNN) algorithms from data mining methods were used for the diagnosis of cervical cancer. The results obtained from the original dataset and the dataset produced with Smote were compared. ANN is the best method evaluated according to classification success and F-score, and the major voted target variable in the balanced data group produced with the Smote algorithm gave the most successful result. The experimental results showed that the use of MV and SMOTE algorithms together increased the classification success from 93% to 99%.
基于SMOTE算法和机器学习方法的宫颈癌预测
及早诊断宫颈癌是最成功的治疗方法之一。在本研究中,目的是利用数据挖掘方法对由巴氏涂片检查获得的数字化数据集进行疾病发现和分类。两阶段的架构已提出宫颈癌的诊断。在研究的第一阶段,从使用的数据集中提取缺失数据,在第二阶段,使用合成少数派过采样技术(SMOTE)算法平衡数据集中的目标类,得到一个新的数据集。通过对研究中使用的数据集应用多数投票(MV)方法,将具有4个目标变量的结构简化为单个目标变量。在两个数据集上,使用数据挖掘方法中的人工神经网络(ANN)、支持向量机(SVM)、决策树(DT)、随机森林(RF)和k近邻(KNN)算法进行宫颈癌诊断。将原始数据集的结果与Smote生成的数据集进行了比较。根据分类成功度和F-score来评价ANN是最好的方法,在Smote算法产生的平衡数据组中,主要投票的目标变量给出了最成功的结果。实验结果表明,MV和SMOTE算法的联合使用将分类成功率从93%提高到99%。
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