Comparative study of machine learning algorithms for breast cancer detection and diagnosis

Dana Bazazeh, R. Shubair
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引用次数: 119

Abstract

Breast cancer is one of the most widespread diseases among women in the UAE and worldwide. Correct and early diagnosis is an extremely important step in rehabilitation and treatment. However, it is not an easy one due to several uncertainties in detection using mammograms. Machine Learning (ML) techniques can be used to develop tools for physicians that can be used as an effective mechanism for early detection and diagnosis of breast cancer which will greatly enhance the survival rate of patients. This paper compares three of the most popular ML techniques commonly used for breast cancer detection and diagnosis, namely Support Vector Machine (SVM), Random Forest (RF) and Bayesian Networks (BN). The Wisconsin original breast cancer data set was used as a training set to evaluate and compare the performance of the three ML classifiers in terms of key parameters such as accuracy, recall, precision and area of ROC. The results obtained in this paper provide an overview of the state of art ML techniques for breast cancer detection.
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机器学习算法在乳腺癌检测和诊断中的比较研究
乳腺癌是阿联酋和全世界妇女中最普遍的疾病之一。正确和早期诊断是康复和治疗中极其重要的一步。然而,由于乳房x光检查中的一些不确定因素,这并不是一件容易的事。机器学习(ML)技术可用于为医生开发工具,这些工具可作为乳腺癌早期检测和诊断的有效机制,从而大大提高患者的生存率。本文比较了常用于乳腺癌检测和诊断的三种最流行的ML技术,即支持向量机(SVM)、随机森林(RF)和贝叶斯网络(BN)。以Wisconsin原始乳腺癌数据集作为训练集,从准确率、查全率、查准率、ROC面积等关键参数对三种ML分类器的性能进行评价和比较。本文所获得的结果概述了用于乳腺癌检测的机器学习技术的现状。
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