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Fuzzy rough sets hybrid scheme for breast cancer detection

机译:用于乳腺癌检测的模糊粗糙集混合方案

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This paper introduces a hybrid scheme that combines the advantages of fuzzy sets and rough sets in conjunction with statistical feature extraction techniques. An application of breast cancer imaging has been chosen and hybridization scheme have been applied to see their ability and accuracy to classify the breast cancer images into two outcomes: cancer or non-cancer. The introduced scheme starts with fuzzy image processing as pre-processing techniques to enhance the contrast of the whole image; to extracts the region of interest and then to enhance the edges surrounding the region of interest. A subsequently extract features from the segmented regions of the interested regions using the gray-level cooccurrence matrix is presented. Rough sets approach for generation of all reducts that contains minimal number of attributes and rules is introduced. Finally, these rules can then be passed to a classifier for discrimination for different regions of interest to test whether they are cancer or non-cancer. To measure the similarity, a new rough set distance function is presented. The experimental results show that the hybrid scheme applied in this study perform well reaching over 98% in overall accuracy with minimal number of generated rules. (This paper was not presented at any IFAC meeting).
机译:本文介绍了一种混合方案,该方案结合了模糊集和粗糙集的优点以及统计特征提取技术。已经选择了乳腺癌成像的应用,并且已经应用​​杂交方案来观察其将乳腺癌图像分类为两个结果的能力和准确性:癌症或非癌症。引入的方案以模糊图像处理作为预处理技术开始,以增强整个图像的对比度。提取感兴趣区域,然后增强感兴趣区域周围的边缘。提出了使用灰度共生矩阵从感兴趣区域的分割区域中提取特征的方法。引入了粗糙集方法以生成包含最少数量的属性和规则的所有归约。最后,这些规则然后可以传递给分类器,以区分不同的目标区域,以测试它们是癌症还是非癌症。为了测量相似度,提出了一个新的粗设定距离函数。实验结果表明,在这项研究中应用的混合方案在生成的规则数量最少的情况下,整体精度达到了98%以上。 (此文件未在任何IFAC会议上发表)。

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