Tan Tao, Mordang Jan-Jurre, van Zelst Jan, Grivegnée André, Gubern-Mérida Albert, Melendez Jaime, Mann Ritse M, Zhang Wei, Platel Bram, Karssemeijer Nico
Department of Radiology and Nuclear Medicine, Radboud University Medical Center, Nijmegen 6525 GA, The Netherlands.
Prevention and Screening Clinic, Jules Bordet, Brussel 1000, Belgium.
Med Phys. 2015 Apr;42(4):1498-504. doi: 10.1118/1.4914162.
Automated 3D breast ultrasound (ABUS) has gained interest in breast imaging. Especially for screening women with dense breasts, ABUS appears to be beneficial. However, since the amount of data generated is large, the risk of oversight errors is substantial. Computer aided detection (CADe) may be used as a second reader to prevent oversight errors. When CADe is used in this fashion, it is essential that small cancers are detected, while the number of false positive findings should remain acceptable. In this work, the authors improve their previously developed CADe system in the initial candidate detection stage.
The authors use a large number of 2D Haar-like features to differentiate lesion structures from false positives. Using a cascade of GentleBoost classifiers that combines these features, a likelihood score, highly specific for small cancers, can be efficiently computed. The likelihood scores are added to the previously developed voxel features to improve detection.
The method was tested in a dataset of 414 ABUS volumes with 211 cancers. Cancers had a mean size of 14.72 mm. Free-response receiver operating characteristic analysis was performed to evaluate the performance of the algorithm with and without using the aforementioned Haar-like feature likelihood scores. After the initial detection stage, the number of missed cancer was reduced by 18.8% after adding Haar-like feature likelihood scores.
The proposed technique significantly improves our previously developed CADe system in the initial candidate detection stage.
自动三维乳腺超声(ABUS)在乳腺成像领域受到了关注。特别是对于乳腺致密的女性进行筛查时,ABUS似乎很有益处。然而,由于生成的数据量很大,漏诊错误的风险相当大。计算机辅助检测(CADe)可作为第二阅片者以防止漏诊错误。当以这种方式使用CADe时,检测出小癌症至关重要,同时假阳性结果的数量应保持在可接受范围内。在这项工作中,作者在初始候选检测阶段改进了他们之前开发的CADe系统。
作者使用大量二维类哈尔特征来区分病变结构与假阳性。通过使用结合这些特征的级联GentleBoost分类器,可以高效地计算出对小癌症具有高度特异性的似然分数。将似然分数添加到先前开发的体素特征中以改善检测效果。
该方法在包含211个癌症的414个ABUS容积的数据集上进行了测试。癌症的平均大小为14.72毫米。进行了自由响应接收器操作特性分析,以评估使用和不使用上述类哈尔特征似然分数时算法的性能。在初始检测阶段之后,添加类哈尔特征似然分数后,漏诊癌症的数量减少了18.8%。
所提出的技术在初始候选检测阶段显著改进了我们先前开发的CADe系统。