Shi Jiazheng, Sahiner Berkman, Chan Heang-Ping, Ge Jun, Hadjiiski Lubomir, Helvie Mark A, Nees Alexis, Wu Yi-Ta, Wei Jun, Zhou Chuan, Zhang Yiheng, Cui Jing
Department of Radiology, The University of Michigan, Ann Arbor, Michigan 48109-0904, USA.
Med Phys. 2008 Jan;35(1):280-90. doi: 10.1118/1.2820630.
Computer-aided diagnosis (CAD) for characterization of mammographic masses as malignant or benign has the potential to assist radiologists in reducing the biopsy rate without increasing false negatives. The purpose of this study was to develop an automated method for mammographic mass segmentation and explore new image based features in combination with patient information in order to improve the performance of mass characterization. The authors' previous CAD system, which used the active contour segmentation, and morphological, textural, and spiculation features, has achieved promising results in mass characterization. The new CAD system is based on the level set method and includes two new types of image features related to the presence of microcalcifications with the mass and abruptness of the mass margin, and patient age. A linear discriminant analysis (LDA) classifier with stepwise feature selection was used to merge the extracted features into a classification score. The classification accuracy was evaluated using the area under the receiver operating characteristic curve. The authors' primary data set consisted of 427 biopsy-proven masses (200 malignant and 227 benign) in 909 regions of interest (ROIs) (451 malignant and 458 benign) from multiple mammographic views. Leave-one-case-out resampling was used for training and testing. The new CAD system based on the level set segmentation and the new mammographic feature space achieved a view-based Az value of 0.83 +/- 0.01. The improvement compared to the previous CAD system was statistically significant (p = 0.02). When patient age was included in the new CAD system, view-based and case-based Az values were 0.85 +/- 0.01 and 0.87 +/- 0.02, respectively. The study also demonstrated the consistency of the newly developed CAD system by evaluating the statistics of the weights of the LDA classifiers in leave-one-case-out classification. Finally, an independent test on the publicly available digital database for screening mammography with 132 benign and 197 malignant ROIs containing masses achieved a view-based Az value of 0.84 +/- 0.02.
计算机辅助诊断(CAD)用于将乳腺钼靶肿块区分为恶性或良性,有潜力帮助放射科医生降低活检率,同时不增加假阴性。本研究的目的是开发一种乳腺钼靶肿块自动分割方法,并探索结合患者信息的新的基于图像的特征,以提高肿块特征分析的性能。作者之前的CAD系统使用主动轮廓分割以及形态学、纹理和毛刺特征,在肿块特征分析方面取得了有前景的结果。新的CAD系统基于水平集方法,包括与肿块内微钙化的存在、肿块边缘的陡峭程度以及患者年龄相关的两种新型图像特征。使用具有逐步特征选择的线性判别分析(LDA)分类器将提取的特征合并为分类分数。使用接收器操作特征曲线下的面积评估分类准确性。作者的主要数据集由来自多个乳腺钼靶视图的909个感兴趣区域(ROI)(451个恶性和458个良性)中的427个经活检证实的肿块(200个恶性和227个良性)组成。采用留一病例重采样进行训练和测试。基于水平集分割和新的乳腺钼靶特征空间的新CAD系统实现了基于视图的Az值为0.83±0.01。与之前的CAD系统相比,这种改进具有统计学意义(p = 0.02)。当患者年龄纳入新的CAD系统时,基于视图和基于病例的Az值分别为0.85±0.01和0.87±0.02。该研究还通过评估留一病例分类中LDA分类器权重的统计数据,证明了新开发的CAD系统的一致性。最后,在包含肿块的132个良性和197个恶性ROI的公开可用乳腺钼靶筛查数字数据库上进行的独立测试,实现了基于视图的Az值为0.84±0.02。