首页> 外文会议>Conference on Medical Imaging: Computer-Aided Diagnosis >Applying a 2D based CAD scheme for Detecting Micro-Calcification Clusters Using Digital Breast Tomosynthesis Images: An Assessment
【24h】

Applying a 2D based CAD scheme for Detecting Micro-Calcification Clusters Using Digital Breast Tomosynthesis Images: An Assessment

机译:应用基于2D的CAD方案,用于使用数字乳房Tomos合成图像检测微钙化簇:评估

获取原文

摘要

Digital breast tomosynthesis (DBT) has emerged as a promising imaging modality for screening mammography. However, visually detecting micro-calcification clusters depicted on DBT images is a difficult task. Computer-aided detection (CAD) schemes for detecting micro-calcification clusters depicted on mammograms can achieve high performance and the use of CAD results can assist radiologists in detecting subtle micro-calcification clusters. In this study, we compared the performance of an available 2D based CAD scheme with one that includes a new grouping and scoring method when applied to both projection and reconstructed DBT images. We selected a dataset involving 96 DBT examinations acquired on 45 women. Each DBT image set included 11 low dose projection images and a varying number of reconstructed image slices ranging froml8 to 87. In this dataset 20 true-positive micro-calcification clusters were visually detected on the projection images and 40 were visually detected on the reconstructed images, respectively. We first applied the CAD scheme that was previously developed in our laboratory to the DBT dataset. We then tested a new grouping method that defines an independent cluster by grouping the same cluster detected on different projection or reconstructed images. We then compared four scoring methods to assess the CAD performance. The maximum sensitivity level observed for the different grouping and scoring methods were 70% and 88% for the projection and reconstructed images with a maximum false-positive rate of 4.0 and 15.9 per examination, respectively. This preliminary study demonstrates that (1) among the maximum, the minimum or the average CAD generated scores, using the maximum score of the grouped cluster regions achieved the highest performance level, (2) the histogram based scoring method is reasonably effective in reducing false-positive detections on the projection images but the overall CAD sensitivity is lower due to lower signal-to-noise ratio, and (3) CAD achieved higher sensitivity and higher false-positive rate (per examination) on the reconstructed images. We concluded that without changing the detection threshold or performing pre-filtering to possibly increase detection sensitivity, current CAD schemes developed and optimized for 2D mammograms perform relatively poorly and need to be re-optimized using DBT datasets and new grouping and scoring methods need to be incorporated into the schemes if these are to be used on the DBT examinations.
机译:数字乳房Tomos合成(DBT)作为筛选乳房X线摄影的有希望的成像模态。然而,目前检测DBT图像描绘的微钙化集群是一项艰巨的任务。用于检测乳房X线照片描绘的微钙化簇的计算机辅助检测(CAD)可以实现高性能,并且使用CAD结果可以帮助放射科医师检测微妙的微钙化簇。在本研究中,我们将可用的2D基于CAD方案的性能进行了比较,其中包括在应用于投影和重建的DBT图像上时的新分组和评分方法。我们选择了一个关于45名女性收购的96次DBT考试的数据集。每个DBT图像设置包括11个低剂量投影图像和不同数量的重建图像切片,范围为OF1至87.在该数据集20中,在投影图像上在视觉上检测到真正的微钙化簇,在重建图像上在视觉上检测到40。 , 分别。我们首先将先前在我们的实验室开发的CAD方案应用于DBT数据集。然后,我们测试了一种新的分组方法,通过在不同投影或重建图像上分组检测到的相同群集来定义独立群集。然后我们比较了四种评分方法来评估CAD性能。对于不同分组和评分方法观察到的最大灵敏度水平分别为每次检查的最大假速率为4.0和15.9的重建图像的70%和88%。这项初步研究表明,使用所得分数的最大值,最小或平均CAD的最大值,使用分组集群区域的最大分数实现了最高性能水平,(2)基于直方图的评分方法在减少错误时具有合理有效 - 对投影图像的积极检测,但由于较低的信噪比,整体CAD灵敏度降低,并且(3)CAD在重建图像上实现了更高的灵敏度和更高的假阳性率(每个检查)。我们得出结论,在不改变检测阈值或进行预滤波以可能提高检测灵敏度的情况下,为2D乳房照片开发和优化的当前CAD方案相对较差,并且需要使用DBT数据集进行重新优化,并且需要进行新分组和评分方法如果要在DBT考试中使用这些计划,请纳入该方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号