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Sonography Images for Breast Cancer Texture Classification in Diagnosis of Malignant or Benign Tumors

机译:用于乳腺癌的超声图像纹理分类诊断恶性肿瘤或良性肿瘤

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This work aims at selecting useful features in critical angles and distances by Gray Level Co-occurrence Matrix (GLCM). In this project, images were labeled based on physician opinion in two groups (malignant or benign). These labeled images were used in classification analysis. Images were opened and read in Matlab software. The tumors were cropped in rectangular shape manually; then graycomatrix and GLCM have been calculated in 4 angels (0, 45, 90 and 135 degree) and 4 distances (1, 2, 3 and 4) for cropped tumor images. Since each angle and distance pair include 22 features, each image had 352 final features (22 features * 4 angles * 4 distances =352). At the final step, features were classified using Kmeans method into 2 classes of malignant and benign; then the confusion matrix was made and qualitative comparison was used to select important features and critical distances and angles in each one. Some special features, angels and distances which had the best classification result and high percentages of accuracy were selected as useful features. These finding suggested that texture parameters can be useful to help in distinguishing between malignant and benign breast tumors.
机译:这项工作旨在通过灰度共发生矩阵(GLCM)在临界角度和距离中选择有用的特征。在这个项目中,根据两组的医生意见(恶性或良性)标记图像。这些标记的图像用于分类分析。在MATLAB软件中打开并读取图像。手动肿瘤以矩形形状裁剪;然后,在4个天使(0,45,90和135度)和4个距离(1,2,3和4)中计算的Graycomatrix和Glcm用于裁剪肿瘤图像。由于每个角度和距离对包括22个特征,因此每个图像具有352个最终特征(22个特征* 4角度* 4距离= 352)。最后一步,使用kemeans方法分类为2个恶性和良性;然后,制造混淆矩阵并使用定性比较来选择每个的重要特征和临界距离和角度。选择具有最佳分类结果和高百分比的特殊功能,天使和距离是有用的特征。这些发现表明,纹理参数可以有助于区分恶性和良性乳腺肿瘤。

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