Breast Cancer Detection via Global and Local Features using Digital Histology Images

G. Murtaza, A. W. Wahab, Ghulam Raza, Liyana Shuib
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Abstract

Globally, breast cancer (BC) is the prevailing cause of unusual deaths in women. Breast tumor (BT) is a primary symptom and may lead to BC. Digital histology (DH) image modality is a gold standard medical test for a definite diagnosis of BC. Traditionally, DH images are visually examined by two or more pathologists to come up with a consensus for authentic BC detection which may cause a high error rate. Therefore, researchers had developed automated BC detection models using a machine learning (ML) based approach. Thus, this study aims to develop a BC detection model through ten feature extraction methods which extract both local and global type features from publicly available breast histology dataset. The extracted features are sorted by their weights, which are computed by the neighborhood component analysis method. A feature selection algorithm is developed to find the minimum number of discriminating features, evaluated through seven heterogeneous traditional ML classifiers. The proposed ML-based BC detection model acquired 90% accuracy for the initial testing set using 51 Harris features. Whereas, for the extended testing set, only three Harris features is shown 93% accuracy. The proposed BC detection model can assist the doctor in giving a second opinion.
利用数字组织学图像通过全局和局部特征检测乳腺癌
乳腺肿瘤(BT)是主要症状,可能导致乳腺癌。数字组织学(DH)图像模式是明确诊断BC的金标准医学检查。传统上,DH图像由两个或更多的病理学家进行视觉检查,以得出真实BC检测的共识,这可能导致高错误率。因此,研究人员使用基于机器学习(ML)的方法开发了自动BC检测模型。因此,本研究旨在通过十种特征提取方法开发BC检测模型,这些方法从公开可用的乳腺组织学数据集中提取局部和全局类型特征。提取的特征根据权重进行排序,并通过邻域分量分析法计算权重。开发了一种特征选择算法,通过七个异构的传统ML分类器进行评估,以找到最小数量的判别特征。所提出的基于ml的BC检测模型在使用51个Harris特征的初始测试集上获得了90%的准确率。然而,对于扩展测试集,只有三个Harris特征显示出93%的准确率。提出的BC检测模型可以帮助医生给出第二意见。
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