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首页> 外文期刊>医学物理 : >Evaluation of a Quasi-fractal Dimension to Enhance Breast Cancer Detection in X-ray Mammograms using Support Vector Machine
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Evaluation of a Quasi-fractal Dimension to Enhance Breast Cancer Detection in X-ray Mammograms using Support Vector Machine

机译:使用支持向量机评估准分形维数以增强 X 射线乳房 X 光检查中的乳腺癌检测

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We previously introduced a quasi-fractal dimension (Q-FD) to enhance breast cancer detection in X-ray mammography. In the present study, we evaluated the usefulness of this image feature for differentiating between benign and malignant masses using a support vector machine (SVM) with various kernels. The kernel computes the inner product of the functions that embed the data into a feature space where the nonlinear pattern appears linear. Q-FD was calculated using the method previously reported from the database of X-ray mammograms produced by the Japan Society of Radiological Technology. In addition to Q-FD, the image features such as curvature (C) and eccentricity (E) were extracted. The conventional fractal dimension (C-FD) was also calculated using the box-counting method. First, we investigated the SVM performance in terms of accuracy, sensitivity and specificity in the task of differentiating between benign and malignant masses by taking 5 parameters (C, E, C-FD, Q-FD and age) as input features in SVM. When using the linear kernel, the best accuracy was obtained at a regularization parameter of 50. For the polynomial and radial basis function (RBF) kernels, the best accuracy was obtained when the degree of polynomial and the width of RBF were 1 and 1, respectively. The accuracies were 0.746±0.089, 0.731±0.095 and 0.734±0.086 for the linear, polynomial and RBF kernels, respectively, when using C, E, C-FD and age as input features in the SVM. When Q-FD was added to the above input features, the accuracies were significantly improved to 0.957±0.045, 0.950±0.045 and 0.949±0.052 for the linear, polynomial and RBF kernels, respectively. These results suggest that Q-FD is effective for discriminating between benign and malignant masses and SVM is highly recommended as a classifier for its simple utilization and good performance, especially when the training set size is small.
机译:我们之前引入了准分形维数 (Q-FD) 来增强 X 射线乳房 X 线摄影中的乳腺癌检测。在本研究中,我们评估了该图像特征使用具有各种内核的支持向量机 (SVM) 区分良性和恶性肿块的有用性。内核计算将数据嵌入到特征空间中的函数的内积,其中非线性模式显示为线性。Q-FD是使用先前从日本放射技术学会制作的X射线乳房X光检查数据库中报告的方法计算的。除Q-FD外,还提取了曲率(C)和偏心率(E)等图像特征。传统的分形维数(C-FD)也使用盒计数法计算。首先,我们以 5 个参数(C、E、C-FD、Q-FD 和年龄)作为 SVM 的输入特征,从准确性、敏感性和特异性方面研究了 SVM 在区分良性和恶性肿块的任务中的性能。当使用线性核时,在正则化参数 50 时获得最佳精度。对于多项式和径向基函数(RBF)核,当多项式阶数和RBF宽度分别为1和1时,精度最高。当在 SVM 中使用 C、E、C-FD 和 age 作为输入特征时±线性核、多项式核和 RBF 核的精度分别为 0.7460.089、0.731±±0.095 和 0.7340.086。当Q-FD加入上述输入特征时,线性核、多项式核和RBF核的精度分别显著提高到0.957±0.045、0.950±0.045和0.949±0.052。这些结果表明,Q-FD可有效区分良性和恶性肿块,并且强烈推荐将SVM作为分类器,因为它使用简单,性能好,特别是在训练集规模较小的情况下。

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  • 来源
    《医学物理 :》 |2008年第1期|15-25|共页
  • 作者单位

    Department of Medical Physics and Engineering Division of Medical Technology and Science Course of Health Science Graduate School of Medicine Osaka University;

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