Department of Radiology, Seoul National University Hospital, Seoul, Korea.
Ultrasound Med Biol. 2012 Jul;38(7):1251-61. doi: 10.1016/j.ultrasmedbio.2012.02.029. Epub 2012 May 12.
For breast ultrasound, the scatterer number density from backscattered echo was demonstrated in previous research to be a useful feature for tumor characterization. To take advantage of the scatterer number density in B-mode images, spatial compound imaging was obtained, and the statistical properties of speckle patterns were analyzed in this study for use in distinguishing between benign and malignant lesions. A total of 137 breast masses (95 benign cases and 42 malignant cases) were used in the proposed computer-aided diagnosis (CAD) system. For each mass, the average number of speckle pixels in a region of interest (ROI) was calculated to use the concept of scatterer number density. In addition, the first-order and second-order statistics of the speckle pixels were quantified to obtain the distributions of the pixel values and the spatial relations among the pixels. The performance of the speckle features extracted from each ROI was compared with the performance of the segmentation features extracted from each segmented tumor. As a result, the proposed CAD system using the speckle features achieved an accuracy of 89.1% (122/137); a sensitivity of 81.0% (34/42); and a specificity of 92.6% (88/95). All of the differences between the speckle features and the segmentation features are not statistically significant (p > 0.05). In a receiver operating characteristic (ROC) curve analysis, the Az value, area under ROC curve, of the speckle features was significantly better than the Az value of the segmentation features (0.93 vs. 0.86, p = 0.0359). The performance of this approach supports the notion that the speckle patterns induced by the scatterers in tissues can provide information for classifying tumors. The proposed speckle features, which were extracted readily from drawing an ROI without any preprocessing, also provide a more efficient classification approach than tumor segmentation.
对于乳腺超声,先前的研究表明,背散射回波的散射体数量密度是肿瘤特征描述的一个有用特征。为了利用 B 模式图像中的散射体数量密度,获得了空间复合成像,并在这项研究中分析了散斑模式的统计特性,以便用于区分良性和恶性病变。该计算机辅助诊断 (CAD) 系统共使用了 137 个乳腺肿块(95 个良性病例和 42 个恶性病例)。对于每个肿块,计算感兴趣区域 (ROI) 中的平均散斑像素数,以使用散射体数量密度的概念。此外,量化了散斑像素的一阶和二阶统计量,以获得像素值的分布和像素之间的空间关系。比较了从每个 ROI 提取的散斑特征和从每个分割肿瘤提取的分割特征的性能。结果,使用散斑特征的 CAD 系统的准确率为 89.1%(122/137);灵敏度为 81.0%(34/42);特异性为 92.6%(88/95)。散斑特征与分割特征之间的所有差异均无统计学意义(p>0.05)。在接收器操作特性 (ROC) 曲线分析中,散斑特征的 Az 值和 ROC 曲线下面积明显优于分割特征的 Az 值(0.93 比 0.86,p=0.0359)。该方法的性能支持这样一种观点,即组织中的散射体引起的散斑模式可以为肿瘤分类提供信息。与肿瘤分割相比,该方法无需任何预处理即可从绘制 ROI 中提取散斑特征,提供了更有效的分类方法。