A Cloud-Based Predictive Model for the Detection of Breast Cancer

Kuldeep Pathoee, Deepesh Rawat, Anupama Mishra, Varsha Arya, M. Rafsanjani, A. Gupta
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引用次数: 0

Abstract

Invasive cancer is the biggest cause of death worldwide, especially among women. Early cancer detection is vital to health. Early identification of breast cancer improves prognosis and survival odds by allowing for timely clinical therapy. For accurate cancer prediction, machine learning requires quick analytics and feature extraction. Cloud-based machine learning is vital for illness diagnosis in rural areas with few medical facilities. In this research, random forests, logistic regression, decision trees, and SVM are employed, and the authors assess the performance of various algorithms using confusion measures and AUROC to choose the best machine learning model for breast cancer prediction. Precision, recall, accuracy, and specificity are used to calculate results. Confusion matrix is based on predicted cases. The ML model's performance is evaluated. For simulation, the authors used the Wisconsin Dataset of Breast Cancer (WDBC). Through experiments, it can be seen that the SVM model reached 98.24% accuracy with an AUC of 0.993, while the logistic regression achieved 94.54% accuracy with an AUC of 0.998.
基于云的乳腺癌检测预测模型
浸润性癌症是全世界最大的死亡原因,尤其是在女性中。早期发现癌症对健康至关重要。早期发现乳腺癌可以通过及时的临床治疗改善预后和生存几率。为了准确预测癌症,机器学习需要快速分析和特征提取。基于云的机器学习对于医疗设施很少的农村地区的疾病诊断至关重要。在本研究中,作者采用随机森林、逻辑回归、决策树和支持向量机,并使用混淆度量和AUROC评估各种算法的性能,以选择最佳的机器学习模型用于乳腺癌预测。精密度、召回率、准确度和特异性用于计算结果。混淆矩阵是基于预测的情况。对ML模型的性能进行了评价。为了进行模拟,作者使用了威斯康星州乳腺癌数据集(WDBC)。通过实验可以看出,SVM模型准确率达到98.24%,AUC为0.993,logistic回归准确率达到94.54%,AUC为0.998。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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