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Automatic Breast Tumor Classification Using a Level Set Method and Feature Extraction in Mammography

机译:自动乳腺肿瘤分类使用乳房X线照相术的液位法和特征提取

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Breast cancer is one of the leading factors of cancer-related deaths among women, therefore designing Computer Aided Diagnosis (CADx) systems to detect malignant and benign tumors of breast masses is extensively essential. Using a segmentation method and subsequently a proper feature extraction is crucial to obtain an appropriate performance in CADx system. In this paper, the Mammography Imaging Analysis Society (MIAS) data is used in order to detect whether breast masses are malignant or benign. A method is based on level set and with the purpose of segmenting the region of the tumor in mammography for the first time and in following, four additional methods were introduced. Including wavelet transform, Gabor wavelet transform Zernike moments and Gray-Level Co-occurrence Matrix (GLCM) to extract features and each one leads to the extraction of a group of the segmented tumor features. Proper features are selected using P value. Consequently, in order to investigate the efficiency of selected features, each group of features are used within one Multilayer Perceptron (MLP). In this paper, the results focus on the appropriate efficiency of proposed segmentation and features extraction methods. Among these considered features, the features related to GLCM are among the best results with the accuracy of 93.37 and sensitivity of 94.18.
机译:乳腺癌是女性癌症相关死亡的主要因素之一,因此设计计算机辅助诊断(CADX)系统检测恶性肿瘤,乳房群体是广泛的必需品。使用分段方法并随后进行适当的特征提取至关重要,以获得CADX系统的适当性能。在本文中,使用乳房X线摄影分析学会(MIS)数据来检测乳房块是否是恶性的或良性的。一种方法基于水平集,并且目的是在乳房X线摄影中分割肿瘤区域的第一次,并介绍另外四种方法。包括小波变换,Gabor小波变换Zernike矩和灰度级共生殖矩阵(GLCM)以提取特征,每一个导致分段肿瘤特征的提取。使用p值选择适当的功能。因此,为了研究所选特征的效率,每组特征在一个多层的Perceptron(MLP)中使用。在本文中,结果侧重于提出的分段和特征提取方法的适当效率。在这些考虑的特征中,与GLCM相关的功能是最佳结果,精度为93.37,灵敏度为94.18。

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