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COMPUTER AIDED DIAGNOSIS SYSTEM FOR AUTOMATIC TWO STAGES CLASSIFICATION OF BREAST MASS IN DIGITAL MAMMOGRAM IMAGES

机译:计算机辅助诊断系统为自动两个阶段进行数字乳房图像乳房肿块分类

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摘要

Breast cancer is the most frequent cancer type that is diagnosed in women. The exact causes of such cancer are still unknown. Early and precise detection of breast cancer using mammogram images or biopsy to provide the required medications can increase the healing percentage. There are much current research efforts to developed a computer aided diagnosis (CAD) system based on mammogram images for detecting and classification of breast masses. In this research, a CAD system is developed for automated segmentation and two-stages classification of breast masses. The first stage includes the classification of the masses into seven classes (normal, calcification, circumscribed, spiculated, ill-defined, architectural distortion, asymmetry), which is done using probabilistic neural network (PNN). The second classification stage is to define the severity of abnormality into two classes (Benign and Malignant) which were done using support vector machine (SVM). The results of applying the proposed method on two mammogram image show that the accuracy of detection and segmentation of the breast mass was 99.8% for mammographic image analysis society database (MIAS-DB) with 322 images and 97.5% for breast cancer digital repository (BCDR), BCDR-F03 and BCDR-DN01 with 936 images, while for the first classification stage has accuracy of 97.08%, sensitivity of 98.30% and specificity of 89.8%, and the second classification stage has an accuracy of 99.18%, sensitivity of 98.42% and specificity of 94.90%.
机译:乳腺癌是妇女诊断的最常见的癌症类型。这种癌症的确切原因仍然是未知的。早期和精确地检测使用乳房图像图像或活组织检查提供所需药物的乳腺癌可以增加愈合百分比。有很多目前的研究努力,开发了一种基于乳房图像图像的计算机辅助诊断(CAD)系统,以检测和分类乳腺肿块。在本研究中,开发了一种CAD系统,用于自动分割和乳房肿块的分类分类。第一阶段包括群众分类为七种类(正常,钙化,外接,刺激,架构,架构的架构失真,不对称),其使用概率神经网络(PNN)完成。第二分类阶段是将异常的严重程度定义为使用支持向量机(SVM)完成的两个类(良性和恶性)。应用提出的方法对两种乳房图图像的结果表明,乳房X XMACTION分析社会数据库(MIS-DB)的检测和分割的准确性为99.8%,乳腺癌数字存储库的322次图像和97.5%(BCDR ),BCDR-F03和BCDR-DN01具有936个图像,而第一个分类阶段的精度为97.08%,敏感性为98.30%,特异性为89.8%,第二分类阶段的精度为99.18%,灵敏度为98.42 %和特异性为94.90%。

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