The Impact of Feature Selection on Different Machine Learning Models for Breast Cancer Classification

Atheer Algherairy, Wadha Almattar, Eman Bakri, Salma A. Albelali
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引用次数: 2

Abstract

Breast cancer appears to be a common type of cancer suffered by women globally, with considered high death rates. The survival rate of breast cancer patients decreases considerably for patients diagnosed at an advanced stage compared to those diagnosed at an early stage. The objective of this study is to investigate breast cancer classification and diagnosis task using the data from WBCD dataset. In our methodology, first, the breast cancer data was scaled. Then, four features selection methods were used to analyze the features. Pearson's Correlation method, Forward Selection method, Mutual Information and Univariate ROC-AUC were the used feature selectors. Next, different Machine Leaning models were applied including Support Vector Machine, Logistic Regression and XGBoost. Finally, the three models were cross-validated by 5-fold method. The ML models with different classifiers were evaluated based on several performance measures including accuracy, precision, recall, and F1-score. results show that Logistic Regression (LR) model with Forward Selection appeared to be the most successful classifier. The obtained classification accuracy, precision, and F1-score were 0.982, 0.983, 0.986; respectively. However, the highest recall score was 0.992 achieved by SVM model with Correlation feature selection. The developed model could potentially help the medical experts for the early diagnosis of breast cancer to decrease potential risk.
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特征选择对不同机器学习模型对乳腺癌分类的影响
乳腺癌似乎是全球妇女罹患的一种常见癌症,死亡率很高。与早期诊断的患者相比,晚期诊断的乳腺癌患者的存活率大大降低。本研究的目的是利用WBCD数据集的数据来研究乳腺癌的分类和诊断任务。在我们的方法中,首先,乳腺癌的数据是按比例计算的。然后,采用四种特征选择方法对特征进行分析。采用Pearson相关法、正向选择法、互信息法和单变量ROC-AUC作为特征选择器。其次,应用了支持向量机、逻辑回归和XGBoost等不同的机器学习模型。最后,采用五重法对三个模型进行交叉验证。使用不同分类器的ML模型基于几个性能指标进行评估,包括准确性、精度、召回率和f1分数。结果表明,前向选择的Logistic回归模型是最成功的分类器。得到的分类准确度、精密度和f1评分分别为0.982、0.983、0.986;分别。而基于相关特征选择的SVM模型召回率最高,为0.992。该模型可以帮助医学专家对乳腺癌进行早期诊断,降低潜在风险。
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