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Characterization of architectural distortion on mammograms using a Linear Energy Detector

机译:使用线性能量探测器在乳房X光照片上表征建筑变形

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Architectural distortion is a breast cancer sign, characterized by spiculated patterns that define the disease malignancy level. In this paper, the radial spiculae of a typical architectural distortion were characterized by a new strategy. Firstly, previously selected Regions of Interest are divided into a set of parallel and disjoint bands (4 pixels × the ROI length), from which intensity integrals (coefficients) are calculated. This partition is rotated every two degrees, searching in the phase plane the characteristic radial spiculation. Then, these coefficients are used to construct a fully connected graph whose edges correspond to the integral values or coefficients and the nodes to x and y image positions. A centrality measure like the first eigenvector is used to extract a set of discriminant coefficients that represent the locations with higher linear energy. Finally, the approach is trained using a set of 24 Regions of Interest obtained from the MIAS database, namely, 12 Architectural Distortions and 12 controls. The first eigenvector is then used as input to a conventional Support Vector Machine classifier whose optimal parameters were obtained by a leave-one-out cross validation. The whole method was assessed in a set of 12 Rols with different distribution of breast tissues (normal and abnormal), and the classification results were compared against a ground truth, already provided by the data base, showing a precision rate of 0.583%, a sensitivity rate of 0.833% and a specificity rate of 0.333%.
机译:建筑畸变是一种乳腺癌的体征,其特征是定义疾病恶性程度的斑点状图案。在本文中,典型建筑变形的放射状尖刺以一种新的策略为特征。首先,将先前选择的关注区域划分为一组平行带和不相交带(4个像素×ROI长度),从中计算出强度积分(系数)。该隔板每两度旋转一次,在相平面中搜索特征性的径向缝隙。然后,这些系数用于构建完全连接的图,该图的边缘与积分值或系数相对应,并且节点与x和y图像位置相对应。像第一个特征向量这样的中心度度量用于提取一组判别系数,这些判别系数代表具有较高线性能量的位置。最后,使用从MIAS数据库获得的一组24个感兴趣区域对方法进行训练,即12个建筑变形和12个控件。然后将第一个特征向量用作常规支持向量机分类器的输入,该分类器的最佳参数是通过留一法交叉验证获得的。整个方法在一组12种不同乳腺组织分布(正常和异常)的Rols中进行了评估,并将分类结果与数据库已提供的基本事实进行了比较,显示准确率为0.583%,敏感性率为0.833%,特异性率为0.333%。

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