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A Tree Classifier for Automatic Breast Tissue Classification Based on BIRADS Categories

机译:基于BIRADS类别的乳房组织自动分类树分类器

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摘要

Breast tissue density is an important risk factor in the detection of breast cancer. It is also known that interpretation of mammogram lesions is more difficult in dense tissues. Therefore, getting a preliminary tissue classification may aid in the subsequent process of breast lesion detection and analysis. This article reviews several classification techniques for two datasets, both digitized screen-film (SFM) and full-field digital (FFDM) mammography, classified according to BIRADS categories. It concludes with a tree classification procedure based on the combination of two classifiers on texture features. Statistical analysis to test the normality and homoscedasticity of the features was carried. Thus, just features that are significant influenced by the tissue type were considered. The results obtained on 322 mammograms of the SFM dataset and on 1137 mammograms of the FFDM dataset demonstrate that up to 80% of samples were correctly classified using using 10-fold cross-validation to train and test the classifiers.
机译:乳房组织密度是检测乳腺癌的重要危险因素。还已知在致密组织中乳房X线照片病变的解释更加困难。因此,获得初步的组织分类可能有助于乳腺病变检测和分析的后续过程。本文回顾了根据BIRADS类别对两个数据集(数字化电影胶片(SFM)和全场数字(FFDM)乳腺摄影)的几种分类技术。它以基于纹理特征的两个分类器的组合为基础的树分类程序结束。进行统计分析以检验特征的正态性和均方差性。因此,仅考虑受组织类型显着影响的特征。在SFM数据集的322个乳房X线照片和FFDM数据集的1137个乳房X线照片上获得的结果表明,使用10倍交叉验证来训练和测试分类器可以正确分类多达80%的样本。

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