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首页> 外文期刊>Physics in medicine and biology. >COMPUTER-AIDED CLASSIFICATION OF MAMMOGRAPHIC MASSES AND NORMAL TISSUE - LINEAR DISCRIMINANT ANALYSIS IN TEXTURE FEATURE SPACE
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COMPUTER-AIDED CLASSIFICATION OF MAMMOGRAPHIC MASSES AND NORMAL TISSUE - LINEAR DISCRIMINANT ANALYSIS IN TEXTURE FEATURE SPACE

机译:乳腺肿块的计算机辅助分类和正常组织-纹理特征空间中的线性判别分析

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We studied the effectiveness of using texture features derived from spatial grey level dependence (SGLD) matrices for classification of masses and normal breast tissue on mammograms. One hundred and sixty-eight regions of interest (ROIS) containing biopsy-proven masses and 504 ROIS containing normal breast tissue were extracted from digitized mammograms for this study. Eight features were calculated for each ROI. The importance of each feature in distinguishing masses from normal tissue was determined by stepwise linear discriminant analysis. Receiver operating characteristic (ROC) methodology was used to evaluate the classification accuracy. We investigated the dependence of classification accuracy on the input features, and on the pixel distance and bit depth in the construction of the SGLD matrices. It was found that five of the texture features were important for the classification. The dependence of classification accuracy on distance and bit depth was weak for distances greater than 12 pixels and bit depths greater than seven bits. By randomly and equally dividing the data set into two groups, the classifier was trained and tested on independent data sets. The classifier achieved an average area under the ROC curve, A(z), of 0.84 during training and 0.82 during testing. The results demonstrate the feasibility of using linear discriminant analysis in the texture feature space for classification of true and false detections of masses on mammograms in a computer-aided diagnosis scheme. [References: 27]
机译:我们研究了使用从空间灰度依赖性(SGLD)矩阵得出的纹理特征对乳房X线照片上的肿块和正常乳腺组织进行分类的有效性。从数字化乳腺X线照片中提取了168个包含活检证实的肿块的感兴趣区域(ROIS)和504个包含正常乳腺组织的ROIS。为每个ROI计算了八个功能。通过逐步线性判别分析确定了每个特征在区分肿块和正常组织中的重要性。接收器工作特性(ROC)方法用于评估分类准确性。我们研究了分类精度对输入特征的依赖性,以及对SGLD矩阵构造中像素距离和位深度的依赖性。发现五个纹理特征对于分类很重要。对于大于12个像素的距离和大于7位的位深度,分类精度对距离和位深度的依赖性很弱。通过将数据集随机平均地分为两组,分类器在独立的数据集上进行了训练和测试。分类器在训练期间和测试期间的ROC曲线下平均面积A(z)分别为0.84和0.82。结果表明,在计算机辅助诊断方案中,在纹理特征空间中使用线性判别分析对乳房X线照片上的质量的正确和错误检测进行分类的可行性。 [参考:27]

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