First Affiliated Hospital, Gannan Medical University, Ganzhou, China.
School of Medical Technology and Information Engineering, Zhejiang Chinese Medical University, Hangzhou, China.
Comput Intell Neurosci. 2022 Feb 2;2022:9082694. doi: 10.1155/2022/9082694. eCollection 2022.
To overcome the limitations of conventional breast screening methods based on digital mammography, a quasi-3D imaging technique, digital breast tomosynthesis (DBT) has been developed in the field of breast cancer screening in recent years. In this work, a computer-aided architecture for mass regions segmentation in DBT images using a dilated deep convolutional neural network (DCNN) is developed. First, to improve the low contrast of breast tumour candidate regions and depress the background tissue noise in the DBT image effectively, the constraint matrix is established after top-hat transformation and multiplied with the DBT image. Second, input image patches are generated, and the data augmentation technique is performed to create the training data set for training a dilated DCNN architecture. Then the mass regions in DBT images are preliminarily segmented; each pixel is divided into two different kinds of labels. Finally, the postprocessing procedure removes all false-positives regions with less than 50 voxels. The final segmentation results are obtained by smoothing the boundaries of the mass regions with a median filter. The testing accuracy (ACC), sensitivity (SEN), and the area under the receiver operating curve (AUC) are adopted as the evaluation metrics, and the ACC, SEN, as well as AUC are 86.3%, 85.6%, and 0.852 for segmenting the mass regions in DBT images on the entire data set, respectively. The experimental results indicate that our proposed approach achieves promising results compared with other classical CAD-based frameworks.
为了克服基于数字乳腺摄影术的传统乳腺筛查方法的局限性,近年来在乳腺癌筛查领域已经开发出了一种准三维成像技术——数字乳腺断层合成术(DBT)。在这项工作中,我们开发了一种基于扩张的深度卷积神经网络(DCNN)的 DBT 图像肿块区域分割的计算机辅助架构。首先,为了提高乳腺肿瘤候选区域的低对比度并有效抑制 DBT 图像中的背景组织噪声,在进行顶帽变换后建立约束矩阵,并将其与 DBT 图像相乘。其次,生成输入图像补丁,并采用数据增强技术创建用于训练扩张 DCNN 架构的训练数据集。然后,初步分割 DBT 图像中的肿块区域;将每个像素分为两种不同的标签。最后,通过使用中值滤波器平滑肿块区域的边界来去除所有少于 50 个体素的假阳性区域。通过平滑肿块区域的边界来获得最终的分割结果。测试准确性(ACC)、敏感性(SEN)和接收器工作曲线下的面积(AUC)被用作评估指标,在整个数据集上对 DBT 图像中的肿块区域进行分割时,ACC、SEN 和 AUC 分别为 86.3%、85.6%和 0.852。实验结果表明,与其他基于经典 CAD 的框架相比,我们提出的方法取得了有希望的结果。