Department of Radiology, Radboud University Nijmegen Medical Centre, 6525 GA Nijmegen, The Netherlands.
IEEE Trans Med Imaging. 2011 Apr;30(4):1001-9. doi: 10.1109/TMI.2011.2105886. Epub 2011 Jan 13.
When reading mammograms, radiologists combine information from multiple views to detect abnormalities. Most computer-aided detection (CAD) systems, however, use primitive methods for inclusion of multiview context or analyze each view independently. In previous research it was found that in mammography lesion-based detection performance of CAD systems can be improved when correspondences between MLO and CC views are taken into account. However, detection at case level detection did not improve. In this paper, we propose a new learning method for multiview CAD systems, which is aimed at optimizing case-based detection performance. The method builds on a single-view lesion detection system and a correspondence classifier. The latter provides class probabilities for the various types of region pairs and correspondence features. The correspondence classifier output is used to bias the selection of training patterns for a multiview CAD system. In this way training can be forced to focus on optimization of case-based detection performance. The method is applied to the problem of detecting malignant masses and architectural distortions. Experiments involve 454 mammograms consisting of four views with a malignant region visible in at least one of the views. To evaluate performance, five-fold cross validation and FROC analysis was performed. Bootstrapping was used for statistical analysis. A significant increase of case-based detection performance was found when the proposed method was used. Mean sensitivity increased by 4.7% in the range of 0.01-0.5 false positives per image.
当阅读乳房 X 光片时,放射科医生会结合来自多个视图的信息来检测异常。然而,大多数计算机辅助检测 (CAD) 系统使用原始方法来包含多视图上下文,或者独立分析每个视图。在之前的研究中发现,在乳房 X 光摄影中,当考虑到 MLO 和 CC 视图之间的对应关系时,CAD 系统的基于病变的检测性能可以得到提高。但是,在病例级别的检测中并没有提高。在本文中,我们提出了一种新的多视图 CAD 系统学习方法,旨在优化基于病例的检测性能。该方法基于单视图病变检测系统和对应分类器。后者为各种类型的区域对和对应特征提供类别概率。对应分类器的输出用于偏向多视图 CAD 系统的训练模式选择。这样可以强制训练专注于基于病例的检测性能的优化。该方法应用于检测恶性肿块和结构扭曲的问题。实验涉及 454 张乳房 X 光片,每张 X 光片有四个视图,其中至少有一个视图可见恶性区域。为了评估性能,进行了五折交叉验证和 FROC 分析。使用引导进行统计分析。当使用所提出的方法时,发现基于病例的检测性能有了显著提高。在 0.01-0.5 个假阳性/图像的范围内,平均敏感性提高了 4.7%。