School of Mechanical and Electrical Engineering, China Jiliang University, Hangzhou 310018, China.
Tomography. 2024 Jun 1;10(6):848-868. doi: 10.3390/tomography10060065.
Computer-aided diagnosis systems play a crucial role in the diagnosis and early detection of breast cancer. However, most current methods focus primarily on the dual-view analysis of a single breast, thereby neglecting the potentially valuable information between bilateral mammograms. In this paper, we propose a Four-View Correlation and Contrastive Joint Learning Network (FV-Net) for the classification of bilateral mammogram images. Specifically, FV-Net focuses on extracting and matching features across the four views of bilateral mammograms while maximizing both their similarities and dissimilarities. Through the Cross-Mammogram Dual-Pathway Attention Module, feature matching between bilateral mammogram views is achieved, capturing the consistency and complementary features across mammograms and effectively reducing feature misalignment. In the reconstituted feature maps derived from bilateral mammograms, the Bilateral-Mammogram Contrastive Joint Learning module performs associative contrastive learning on positive and negative sample pairs within each local region. This aims to maximize the correlation between similar local features and enhance the differentiation between dissimilar features across the bilateral mammogram representations. Our experimental results on a test set comprising 20% of the combined Mini-DDSM and Vindr-mamo datasets, as well as on the INbreast dataset, show that our model exhibits superior performance in breast cancer classification compared to competing methods.
计算机辅助诊断系统在乳腺癌的诊断和早期检测中起着至关重要的作用。然而,目前大多数方法主要侧重于单个乳房的双视图分析,从而忽略了双侧乳房 X 光片之间潜在的有价值信息。在本文中,我们提出了一种用于双侧乳房 X 光图像分类的四视图相关和对比联合学习网络(FV-Net)。具体来说,FV-Net 专注于提取和匹配双侧乳房 X 光片的四个视图中的特征,同时最大化它们的相似性和差异性。通过跨乳房双路径注意力模块,实现了双侧乳房 X 光片视图之间的特征匹配,捕获了乳房 X 光片之间的一致性和互补特征,并有效减少了特征错位。在从双侧乳房 X 光片得出的重构特征图中,双侧乳房 X 光片对比联合学习模块对每个局部区域内的正例和负例样本对进行关联对比学习。这旨在最大化相似局部特征之间的相关性,并增强双侧乳房 X 光片表示之间的不同特征之间的区分。我们在包含 Mini-DDSM 和 Vindr-mamo 数据集的 20%的测试集以及 INbreast 数据集上的实验结果表明,与竞争方法相比,我们的模型在乳腺癌分类方面表现出优越的性能。