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Chapter 12 Relevant Features for Classification of Digital Mammogram Images

机译:第12章数字乳房X光图像分类的相关特征

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Breast cancer incident in Indonesia reaches 26 per 100,000 women. An early detection of breast cancer is a helpful effort for reaching a successful treatment. Mammography is the best tool for such detection, especially by means of Computer Aided Diagnosis (CAD). The systems of CAD are used to assist the radiologist to determine the benign or malignant abnormalities in the breast. Mammogram image processing system generally consists of mammogram image acquisition, pre-processing, segmentation, feature extraction, feature selection and classification. The features used in feature extraction should be able to represent the characteristics of mammogram image. A feature extraction process uses some texture features based on Gray Level Co-occurrence Matrix (GLCM) and histogram. This study used 60 mammogram images, left and right, from Clinical Oncology Kotabaru Yogyakarta. After passing through the enhancement process, mammogram images were extracted with 11 features of GLCM and histogram. The result then showed that the texture features could be used for the mammogram image feature extraction, but not all of the features were relevant. Thus, for knowing the effects of using irrelevant features, the classification results by using all features and selected features were compared. The highest accuracy was obtained from the selected features reaching at 86.67 %. High accuracy was determined by the relevant features used as input classifier. The selected features here included IDM, ASM, Energy, Contrast, Entropy-based GLCM, Histogram-based Entropy, and Skewness.
机译:印度尼西亚的乳腺癌事件每10万名妇女达到26名。早期检测乳腺癌是达到成功治疗的有用努力。乳房X线照相是这种检测的最佳工具,尤其是通过计算机辅助诊断(CAD)。 CAD的系统用于帮助放射学家确定乳房中的良性或恶性异常。乳房图像图像处理系统通常由乳房X线照片图像采集,预处理,分割,特征提取,特征选择和分类组成。特征提取中使用的特征应该能够代表乳房X线图图像的特征。特征提取过程使用基于灰度共发生矩阵(GLCM)和直方图的一些纹理特征。本研究使用了60次乳房X线图,左右,来自临床肿瘤肿瘤Kotabaru Yogyakarta。通过增强过程后,用GLCM和直方图的11个特征提取乳房X线照片图像。然后,结果表明,纹理特征可用于乳清皮图图像特征提取,但并非所有功能都是相关的。因此,为了了解使用无关的特征的效果,比较了通过使用所有特征和所选特征的分类结果。从选定的特征获得最高精度,达到86.67%。通过用作输入分类器的相关功能确定高精度。这里的所选功能包括IDM,ASM,能量,对比度,基于熵的GLCM,基于直方图的熵和偏斜。

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