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Classification of breast and colorectal tumors based on percolation of color normalized images

机译:基于彩色归一化图像渗滤的乳腺和大肠肿瘤分类

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Percolation is a fractal descriptor that has been applied recently on computer vision problems. We applied this descriptor on 58 colored histological breast images, and 165 colored histological colorectal images, both stained with Hematoxylin and Eosin, in order to extract features to differentiate between benign and malignant cases. The experiments were also performed over normalized images, aiming to analyze the influence of different color normalization techniques on percolation-based features and whether they can provide better classification results. The feature sets obtained from the application of the method on the original images and on the normalized images with three different techniques were tested using 12 different classifiers. We compared the obtained results with other relevant methods in the area and observed significant contributions, with AUC rates above 0.900 in both normalized and non-normalized images. We also verified that color normalization does not contribute to the classification of breast tumors when associated with percolation features. However, color normalized images from the colorectal tumor's dataset provided better results than the original images. (C) 2019 Published by Elsevier Ltd.
机译:渗滤是最近在计算机视觉问题上应用的分形描述符。我们将这个描述符应用于58幅彩色组织学乳腺图像和165幅彩色组织学结直肠图像(均用苏木精和曙红染色),以提取特征以区分良性和恶性病例。还对归一化图像进行了实验,旨在分析不同颜色归一化技术对基于渗滤的特征的影响以及它们是否可以提供更好的分类结果。使用12种不同的分类器测试了使用三种方法从原始图像和标准化图像上应用该方法获得的特征集。我们将获得的结果与该地区的其他相关方法进行了比较,并观察到了显着贡献,在归一化和非归一化图像中AUC率均高于0.900。我们还验证了与渗滤特征相关联时,颜色归一化不会有助于乳腺肿瘤的分类。但是,来自结直肠肿瘤数据集的颜色归一化图像比原始图像提供了更好的结果。 (C)2019由Elsevier Ltd.发布

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