首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Regrouping initial CAD mass detections to facilitate classification of suspicious regions in mammography
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Regrouping initial CAD mass detections to facilitate classification of suspicious regions in mammography

机译:重组初始CAD质量检测以促进乳房X线照相术中可疑区域的分类

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There is a lot of interest in developing computer-aided detection (CAD) techniques for mammography that use multiple view information. During the development of such techniques we have noticed that they are hampered by the phenomena that mass lesions are sometimes detected by multiple regions. This has encouraged us to develop a technique to regroup initial CAD detections to facilitate the final classification of suspicious regions. The regrouping technique searches for detections that belong to the same structure. Therefore, it takes into account the distance between the detections and the image structure along a path between the detections. When correspondence is found, the two detections are replaced by a new detection in between the initial detections. Our regrouping technique correctly regrouped the detections in 48 percent of the masses initially detected by multiple regions. Of the false positive detections two percent were combined, and the percentage of true positive - false positive combinations was one. Incorporation of the algorithm into our CAD scheme resulted in a slight increase in detection performance. In addition, in our multiple view scheme it also resulted in a decrease in the number of incorrectly linked regions in corresponding mammographic views.
机译:开发使用多种视图信息的乳腺摄影计算机辅助检测(CAD)技术引起了很多兴趣。在开发此类技术的过程中,我们注意到它们受到有时在多个区域检测到大量病变的现象的阻碍。这鼓励我们开发一种将初始CAD检测重新组合以促进对可疑区域进行最终分类的技术。重组技术搜索属于相同结构的检测。因此,考虑到检测之间的距离和沿着检测之间的路径的图像结构。当找到对应关系时,两个检测将由初始检测之间的新检测替换。我们的重组技术正确地将多个区域最初检测到的质量中48%的检测结果进行了重组。在错误阳性检测结果中,有2%被合并,而真正阳性-错误阳性结果的百分比是1。将算法合并到我们的CAD方案中导致检测性能略有提高。另外,在我们的多视图方案中,它还导致相应的乳房X线照片视图中错误链接区域的数量减少。

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