Sahiner B, Chan H P, Petrick N, Helvie M A, Hadjiiski L M
Department of Radiology, University of Michigan, Ann Arbor 48109, USA.
Med Phys. 2001 Jul;28(7):1455-65. doi: 10.1118/1.1381548.
We are developing new computer vision techniques for characterization of breast masses on mammograms. We had previously developed a characterization method based on texture features. The goal of the present work was to improve our characterization method by making use of morphological features. Toward this goal, we have developed a fully automated, three-stage segmentation method that includes clustering, active contour, and spiculation detection stages. After segmentation, morphological features describing the shape of the mass were extracted. Texture features were also extracted from a band of pixels surrounding the mass. Stepwise feature selection and linear discriminant analysis were employed in the morphological, texture, and combined feature spaces for classifier design. The classification accuracy was evaluated using the area Az under the receiver operating characteristic curve. A data set containing 249 films from 102 patients was used. When the leave-one-case-out method was applied to partition the data set into trainers and testers, the average test Az for the task of classifying the mass on a single mammographic view was 0.83 +/- 0.02, 0.84 +/- 0.02, and 0.87 +/- 0.02 in the morphological, texture, and combined feature spaces, respectively. The improvement obtained by supplementing texture features with morphological features in classification was statistically significant (p = 0.04). For classifying a mass as malignant or benign, we combined the leave-one-case-out discriminant scores from different views of a mass to obtain a summary score. In this task, the test Az value using the combined feature space was 0.91 +/- 0.02. Our results indicate that combining texture features with morphological features extracted from automatically segmented mass boundaries will be an effective approach for computer-aided characterization of mammographic masses.
我们正在开发用于在乳房X光片上表征乳腺肿块的新计算机视觉技术。我们之前已经开发了一种基于纹理特征的表征方法。当前工作的目标是通过利用形态特征来改进我们的表征方法。为了实现这一目标,我们开发了一种全自动的三阶段分割方法,该方法包括聚类、活动轮廓和毛刺检测阶段。分割后,提取描述肿块形状的形态特征。还从肿块周围的像素带中提取纹理特征。在形态、纹理和组合特征空间中采用逐步特征选择和线性判别分析进行分类器设计。使用接收器操作特征曲线下的面积Az评估分类准确率。使用了一个包含来自102名患者的249张胶片的数据集。当采用留一法将数据集划分为训练集和测试集时,在形态、纹理和组合特征空间中,对单个乳房X光视图上的肿块进行分类任务的平均测试Az分别为0.83±0.02、0.84±0.02和0.87±0.02。在分类中通过用形态特征补充纹理特征所获得的改进具有统计学意义(p = 0.04)。为了将肿块分类为恶性或良性,我们将来自肿块不同视图的留一法判别分数进行组合以获得一个汇总分数。在这项任务中,使用组合特征空间的测试Az值为0.91±0.02。我们的结果表明,将纹理特征与从自动分割的肿块边界提取的形态特征相结合将是计算机辅助表征乳房X光片上肿块的有效方法。