Breast abnormalities classification using deep learning feature extraction

Vladislav Pryadka, Andrei Krendal, J. González-Fraga, V. Kober, A. Kober
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Abstract

In this study, the main goal is to improve the performance of existing computer diagnostic systems by proposing new processing methods. We use the public CBIS-DDSM dataset for training and validation. The dataset consists of normal screenings with benign tumors and malignant tumors, with all pathologies carefully selected and checked by a radiologist. The data set also includes ROI masks and pathology bounding boxes, as well as labels corresponding to the class of each pathology diagnosis. To achieve better results on the dataset, we transform the data for their more efficient representation using autoencoders in order to obtain features with low intraclass and high interclass variance, and apply LDA to the encoded features to classify pathologies. Methods for automated pathology detection are not considered in this article, since it is mainly focused on the classification task itself. The entire pipeline of the system consists of the following steps: first, feature extraction using pathology segmentation; dividing the data into two clusters; feature transformation using linear discriminant analysis to minimize intra-class variance; finally, the classification of pathologies. The results of this study for the classification of pathologies using various deep learning methods are presented and discussed.
基于深度学习特征提取的乳腺异常分类
在本研究中,主要目标是通过提出新的处理方法来提高现有计算机诊断系统的性能。我们使用公共的CBIS-DDSM数据集进行训练和验证。该数据集包括良性肿瘤和恶性肿瘤的正常筛查,所有病理都由放射科医生仔细选择和检查。该数据集还包括ROI掩码和病理边界框,以及对应于每种病理诊断类别的标签。为了在数据集上获得更好的结果,我们使用自编码器对数据进行更有效的表示,以获得低类内和高类间方差的特征,并对编码的特征应用LDA进行病理分类。本文不考虑自动病理检测的方法,因为它主要关注分类任务本身。整个系统的流程包括以下几个步骤:首先,利用病理分割进行特征提取;将数据分成两类;利用线性判别分析的特征变换最小化类内方差;最后,病理分类。本文介绍并讨论了使用各种深度学习方法进行病理分类的研究结果。
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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