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Classification of breast abnormality using decision tree based on GLCM features in mammograms

机译:使用基于乳腺X光检查中GLCM特征的决策树对乳房异常进行分类

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摘要

Breast cancer is the second most common cancer among the women and the major victim for the breast cancer is the women. In the USA, one out of eight is diagnosed as breast cancer among the other cancers. Medical images can be analysed for identification. Image pre-processing is an essential procedure used for reducing image noise, highlighting edges, or displaying digital images. Mammogram is the best way for screening the breast. Applying medical image techniques could help in identifying and classifying the abnormalities present in the breast. The features which are extracted from medical images can also be given as input to the classifier for classification. Mammogram has been given as input to the proposed system. Mammograms are pre-processed before given to the classifier. The features are extracted through GLCM and then decision tree classifier is used in this paper for classifying the breast abnormality as benign and malignant.
机译:乳腺癌是女性中第二大最常见的癌症,乳腺癌的主要受害者是女性。在美国,其他癌症中,八分之一被诊断为乳腺癌。可以分析医学图像以进行识别。图像预处理是用于减少图像噪声,突出显示边缘或显示数字图像的基本过程。乳房X线照片是筛查乳房的最佳方法。应用医学影像技术可以帮助识别和分类乳房中存在的异常。从医学图像提取的特征也可以作为输入给分类器以进行分类。乳房X光照片已作为建议系统的输入。乳房X线照片在进行分类之前要经过预处理。通过GLCM提取特征,然后使用决策树分类器将乳腺异常分为良性和恶性。

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