Sahiner Berkman, Chan Heang-Ping, Hadjiiski Lubomir M, Helvie Mark A, Paramagul Chinatana, Ge Jun, Wei Jun, Zhou Chuan
Department of Radiology, University of Michigan, Ann Arbor 48109-0904, USA.
Med Phys. 2006 Jul;33(7):2574-85. doi: 10.1118/1.2208919.
We are developing new techniques to improve the accuracy of computerized microcalcification detection by using the joint two-view information on craniocaudal (CC) and mediolateral-oblique (MLO) views. After cluster candidates were detected using a single-view detection technique, candidates on CC and MLO views were paired using their radial distances from the nipple. Candidate pairs were classified with a similarity classifier that used the joint information from both views. Each cluster candidate was also characterized by its single-view features. The outputs of the similarity classifier and the single-view classifier were fused and the cluster candidate was classified as a true microcalcification cluster or a false-positive (FP) using the fused two-view information. A data set of 116 pairs of mammograms containing microcalcification clusters and 203 pairs of normal images from the University of South Florida (USF) public database was used for training the two-view detection algorithm. The trained method was tested on an independent test set of 167 pairs of mammograms, which contained 71 normal pairs and 96 pairs with microcalcification clusters collected at the University of Michigan (UM). The similarity classifier had a very low FP rate for the test set at low and medium levels of sensitivity. However, the highest mammogram-based sensitivity that could be reached by the similarity classifier was 69%. The single-view classifier had a higher FP rate compared to the similarity classifier, but it could reach a maximum mammogram-based sensitivity of 93%. The fusion method combined the scores of these two classifiers so that the number of FPs was substantially reduced at relatively low and medium sensitivities, and a relatively high maximum sensitivity was maintained. For the malignant microcalcification clusters, at a mammogram-based sensitivity of 80%, the FP rates were 0.18 and 0.35 with the two-view fusion and single-view detection methods, respectively. When the training and test sets were switched, a similar improvement was obtained, except that both the fusion and single-view detection methods had superior test performances on the USF data set than those on the UM data set. Our results indicate that correspondence of cluster candidates on two different views provides valuable additional information for distinguishing FPs from true microcalcification clusters.
我们正在开发新技术,通过利用头尾位(CC)和内外斜位(MLO)视图的联合双视图信息来提高计算机化微钙化检测的准确性。在使用单视图检测技术检测到聚类候选对象后,CC视图和MLO视图上的候选对象根据它们到乳头的径向距离进行配对。候选对使用来自两个视图的联合信息通过相似性分类器进行分类。每个聚类候选对象还由其单视图特征来表征。相似性分类器和单视图分类器的输出进行融合,然后使用融合后的双视图信息将聚类候选对象分类为真正的微钙化聚类或假阳性(FP)。使用来自南佛罗里达大学(USF)公共数据库的116对包含微钙化聚类的乳腺X线照片数据集和203对正常图像来训练双视图检测算法。在一个由167对乳腺X线照片组成的独立测试集上对训练好的方法进行测试,该测试集包含密歇根大学(UM)收集的71对正常图像和96对带有微钙化聚类的图像。对于测试集,相似性分类器在低和中等灵敏度水平下具有非常低的FP率。然而,相似性分类器能够达到的基于乳腺X线照片的最高灵敏度为69%。与相似性分类器相比,单视图分类器的FP率更高,但它能够达到基于乳腺X线照片的最大灵敏度为93%。融合方法结合了这两个分类器的分数结果,从而在相对低和中等灵敏度下大幅减少了FP的数量,并保持了相对较高的最大灵敏度。对于恶性微钙化聚类,在基于乳腺X线照片的灵敏度为80%时,双视图融合和单视图检测方法的FP率分别为0.18和0.35。当训练集和测试集切换时,也获得了类似的改进,只是融合和单视图检测方法在USF数据集上的测试性能都优于在UM数据集上的性能。我们的结果表明,两个不同视图上聚类候选对象的对应关系为区分FP和真正的微钙化聚类提供了有价值的额外信息。