IEEE J Biomed Health Inform. 2021 Jun;25(6):2058-2070. doi: 10.1109/JBHI.2020.3034804. Epub 2021 Jun 3.
Breast Ultrasound (BUS) imaging has been recognized as an essential imaging modality for breast masses classification in China. Current deep learning (DL) based solutions for BUS classification seek to feed ultrasound (US) images into deep convolutional neural networks (CNNs), to learn a hierarchical combination of features for discriminating malignant and benign masses. One existing problem in current DL-based BUS classification was the lack of spatial and channel-wise features weighting, which inevitably allow interference from redundant features and low sensitivity. In this study, we aim to incorporate the instructive information provided by breast imaging reporting and data system (BI-RADS) within DL-based classification. A novel DL-based BI-RADS Vector-Attention Network (BVA Net) that trains with both texture information and decoded information from BI-RADS stratifications was proposed for the task. Three baseline models, pre-trained DenseNet-121, ResNet-50 and Residual-Attention Network (RA Net) were included for comparison. Experiments were conducted on a large scale private main dataset and two public datasets, UDIAT and BUSI. On the main dataset, BVA Net outperformed other models, in terms of AUC (area under the receiver operating curve, 0.908), ACC (accuracy, 0.865), sensitivity (0.812) and precision (0.795). BVA Net also achieved the high AUC (0.87 and 0.882) and ACC (0.859 and 0.843), on UDIAT and BUSI. Moreover, we proposed a method that integrates both BVA Net binary classification and BI-RADS stratification estimation, called integrated classification. The introduction of integrated classification helped improving the overall sensitivity while maintaining a high specificity.
乳腺超声(BUS)成像已被认为是中国乳腺肿块分类的一种重要成像方式。目前基于深度学习(DL)的 BUS 分类解决方案旨在将超声(US)图像输入深度卷积神经网络(CNNs),以学习用于区分恶性和良性肿块的分层组合特征。当前基于 DL 的 BUS 分类中的一个现有问题是缺乏空间和通道特征加权,这不可避免地允许冗余特征和低灵敏度的干扰。在这项研究中,我们旨在将乳腺影像报告和数据系统(BI-RADS)提供的指导信息纳入基于 DL 的分类中。提出了一种新的基于 DL 的 BI-RADS 向量注意力网络(BVA Net),该网络可以同时训练纹理信息和 BI-RADS 分层的解码信息。为了进行比较,我们纳入了三个基线模型,即预训练的 DenseNet-121、ResNet-50 和 Residual-Attention Network(RA Net)。实验在一个大型私有主数据集和两个公共数据集 UDIAT 和 BUSI 上进行。在主数据集上,BVA Net 在 AUC(接收器操作曲线下的面积,0.908)、ACC(准确性,0.865)、敏感性(0.812)和精度(0.795)方面均优于其他模型。BVA Net 在 UDIAT 和 BUSI 上也实现了高 AUC(0.87 和 0.882)和 ACC(0.859 和 0.843)。此外,我们提出了一种将 BVA Net 二进制分类和 BI-RADS 分层估计集成的方法,称为集成分类。集成分类的引入有助于提高整体敏感性,同时保持高特异性。