Machine learning approaches for breast cancer diagnosis and prognosis

Ayush Sharma, Sudhanshu Kulshrestha, S. Daniel
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引用次数: 34

Abstract

For breast cancer diagnosis in patients, radiologists conduct Fine Needle Aspirate (FNA) procedure of breast tumor. This procedure reveal features such as tumor radius, concavity, texture and fractal dimensions. These features are further studied by medical experts to classify tumor as Benign or Malignant. The cardinal aim of this paper is to predict breast cancer as benign or malignant using data set from Wisconsin Breast Cancer Data using sophisticated classifiers such as Logistic Regression, Nearest Neighbor, Support Vector Machines. Furthermore, using Wisconsin Prognostic data set, probability of recurrence in affected patients in calculated. As a result, a concrete relationship between precision, recall and the number of features in the data set is achieved, which is shown graphically.
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乳腺癌诊断和预后的机器学习方法
对于患者的乳腺癌诊断,放射科医师对乳腺肿瘤进行细针抽吸(FNA)手术。该程序显示肿瘤半径、凹凸度、纹理和分形维数等特征。医学专家进一步研究这些特征,将肿瘤分类为良性或恶性。本文的主要目的是使用来自威斯康星州乳腺癌数据集的数据集,使用复杂的分类器(如逻辑回归、最近邻、支持向量机)来预测乳腺癌的良性或恶性。此外,使用威斯康星预后数据集,计算了受影响患者的复发概率。结果,获得了数据集中的精度、召回率和特征数量之间的具体关系,如图所示。
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