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Supervised Classification of Breast Cancer Malignancy Using Integrated Modified Marker Controlled Watershed Approach

机译:使用综合改进的标记控制流域方法监督乳腺癌恶性肿瘤的分类

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Worldwide statistics inform that breast cancer occupies second position causing mortality among women. Symptomatic detection of the disease in its early stage is important for treatment to help the internists and radiologists in their diagnosis. In the proposed module, nuclei locations are obtained using Hough Transform. Nuclei Segmentation of the pre-processed Hematoxylin and Eosin stained breast cancer histopathological images is done using Proposed Modified - Marker Controlled Watershed Approach (MMCWA). Small fixed Structuring Element (SE) size removes respective bright and dark details during opening and closing morphology & large SE size removes huge contour details of the input image. So, in the proposed MMCWA, by using weighted variance method, the adaptive Structuring Element size of the SE map is obtained to protect all details in the image. A total of 20 features, including 5 shape based features and 15 texture features were extracted for classification using Decision Trees, SVM and KNN classifiers. Algorithmic performance evaluation is accomplished and proved that the proposed integrated MMCWA provides better results than the traditional marker controlled watershed. The proposed module was trained with 96 images and tested over 24 images taken from the digital database.
机译:全球统计数据通知乳腺癌占据妇女死亡率的第二个位置。在其早期疾病的症状检测对于治疗是重要的,以帮助内部主人和放射科医师在诊断中。在所提出的模块中,使用Hough变换获得核位置。使用所提出的修饰 - 标记控制的流域方法(MMCWA)进行预加工血管杂蛋白和曙红染色乳腺癌组织病理学图像的核分割。小固定结构元件(SE)尺寸在打开和关闭形态期间消除相应的明亮和暗细节,大小尺寸消除了输入图像的巨大轮廓细节。因此,在所提出的MMCWA中,通过使用加权方差方法,获得SE地图的自适应结构元素大小以保护图像中的所有细节。使用决策树,SVM和KNN分类器,共提取20个特征,包括5个基于形状的特征和15个纹理特征。完成算法性能评估,并证明建议的集成MMCWA提供比传统标记控制流域更好的结果。建议的模块接受了96个图像培训并从数字数据库中拍摄了24张图像。

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