The University of Chicago, 5801 S Ellis Ave, Chicago, Illinois.
The University of Chicago, 5801 S Ellis Ave, Chicago, Illinois.
Acad Radiol. 2019 Jun;26(6):735-743. doi: 10.1016/j.acra.2018.06.019. Epub 2018 Aug 1.
With the growing adoption of digital breast tomosynthesis (DBT) in breast cancer screening, we compare the performance of deep learning computer-aided diagnosis on DBT images to that of conventional full-field digital mammography (FFDM).
In this study, we retrospectively collected FFDM and DBT images of 78 biopsy-proven lesions from 76 patients. A region of interest was selected for each lesion on FFDM, synthesized 2D, and DBT key slice images. Features were extracted from each lesion using a pretrained convolutional neural network (CNN) and served as input to a support vector machine classifier trained in the task of predicting likelihood of malignancy.
From receiver operating characteristic (ROC) analysis of all 78 lesions, the synthesized 2D image performed best in both the cradiocaudal view (area under the ROC curve [AUC] = 0.81, SE = 0.05) and mediolateral oblique view (AUC = 0.88, SE = 0.04) in the task of lesion characterization. When cradiocaudal and mediolateral oblique data of each lesion were merged through soft voting, DBT key slice image performed best (AUC = 0.89, SE = 0.04). When only masses and architectural distortions (ARDs) were considered, DBT performed significantly better than FFDM (p = 0.024).
DBT performed significantly better than FFDM in the merged view classification of mass and ARD lesions. The increased performance suggests that the information extracted by the CNN from DBT images may be more relevant to lesion malignancy status than the information extracted from FFDM images. Therefore, this study provides supporting evidence for the efficacy of computer-aided diagnosis on DBT in the evaluation of mass and ARD lesions.
随着数字乳腺断层摄影术(DBT)在乳腺癌筛查中的广泛应用,我们比较了深度学习计算机辅助诊断在 DBT 图像和传统全数字化乳腺摄影术(FFDM)中的性能。
本研究回顾性收集了 76 名经活检证实的 78 个病灶的 FFDM 和 DBT 图像。在 FFDM 上为每个病灶选择感兴趣区,合成 2D 及 DBT 关键切片图像。使用预训练的卷积神经网络(CNN)从每个病灶提取特征,并作为支持向量机分类器的输入,用于预测恶性可能性的任务。
对所有 78 个病灶的受试者工作特征(ROC)分析显示,在病灶特征描述任务中,合成 2D 图像在头尾位(ROC 曲线下面积 [AUC] = 0.81,SE = 0.05)和内外斜位(AUC = 0.88,SE = 0.04)的表现最佳。当通过软投票合并每个病灶的头尾位和内外斜位数据时,DBT 关键切片图像的表现最佳(AUC = 0.89,SE = 0.04)。当仅考虑肿块和结构扭曲(ARD)时,DBT 明显优于 FFDM(p = 0.024)。
在肿块和 ARD 病灶的合并视图分类中,DBT 明显优于 FFDM。性能的提高表明,从 DBT 图像中提取的 CNN 信息与病灶恶性状态的相关性可能强于从 FFDM 图像中提取的信息。因此,本研究为 DBT 在评估肿块和 ARD 病变中的计算机辅助诊断的疗效提供了支持证据。