Kallenberg Michiel, Karssemeijer Nico
Department of Radiology, Radboud University Nijmegen Medical Centre, Geert Grooteplein Zuid 18, 6525 GA Nijmegen, The Netherlands.
Phys Med Biol. 2008 Dec 7;53(23):6879-91. doi: 10.1088/0031-9155/53/23/015. Epub 2008 Nov 12.
It would be of great value when available databases of screen-film mammography (SFM) images can be used to train full-field digital mammography (FFDM) computer-aided detection (CAD) systems, as compilation of new databases is costly. In this paper, we investigate this possibility. Firstly, we develop a method that converts an FFDM image into an SFM-like representation. In this conversion method, we establish a relation between exposure and optical density by simulation of an automatic exposure control unit. Secondly, we investigate the effects of using the SFM images as training samples compared to training with FFDM images. Our FFDM database consisted of 266 cases, of which 102 were biopsy-proven malignant masses and 164 normals. The images were acquired with systems of two different manufacturers. We found that, when we trained our FFDM CAD system with a small number of images, training with FFDM images, using a five-fold crossvalidation procedure, outperformed training with SFM images. However, when the full SFM database, consisting of 348 abnormal cases (including 204 priors) and 810 normal cases, was used for training, SFM training outperformed FFDMA training. These results show that an existing CAD system for detection of masses in SFM can be used for FFDM images without retraining.
当可利用的屏-片乳腺摄影(SFM)图像数据库能够用于训练全视野数字化乳腺摄影(FFDM)计算机辅助检测(CAD)系统时,其价值巨大,因为新建数据库的成本很高。在本文中,我们研究了这种可能性。首先,我们开发了一种将FFDM图像转换为类似SFM表示的方法。在这种转换方法中,我们通过模拟自动曝光控制单元来建立曝光与光学密度之间的关系。其次,我们研究了将SFM图像用作训练样本与使用FFDM图像进行训练相比的效果。我们的FFDM数据库包含266个病例,其中102个是经活检证实的恶性肿块,164个是正常病例。这些图像是用两个不同制造商的系统采集的。我们发现,当我们用少量图像训练我们的FFDM CAD系统时,使用五重交叉验证程序,用FFDM图像训练优于用SFM图像训练。然而,当使用由348个异常病例(包括204个先前病例)和810个正常病例组成的完整SFM数据库进行训练时,SFM训练优于FFDMA训练。这些结果表明,现有的用于SFM中肿块检测的CAD系统可用于FFDM图像而无需重新训练。