Liu Yuhang, Zhou Changsheng, Zhang Fandong, Zhang Qianyi, Wang Siwen, Zhou Juan, Sheng Fugeng, Wang Xiaoqi, Liu Wanhua, Wang Yizhou, Yu Yizhou, Lu Guangming
AI Lab, Deepwise Healthcare, Beijing 100080, China.
Medical Imaging Center, Nanjing Jinling Hospital Clinical School, Medical College, Nanjing University, Nanjing 210002, China.
Med Image Anal. 2021 Jul;71:101999. doi: 10.1016/j.media.2021.101999. Epub 2021 Mar 4.
Detecting breast soft-tissue lesions including masses, structural distortions and asymmetries is of great importance due to the high risk leading to breast cancer. Most existing deep learning based approaches detect lesions with only unilateral images. However, multi-view mammogram images provide highly related and complementary information which helps to make the clinical analysis more comprehensive and reliable. In this paper, we propose a multi-view network for breast soft-tissue lesion detection called C-Net (Compare and Contrast, C) that fuses information across different views. The proposed model contains the following three modules. The spatial context enhancing (SCE) module compares ipsilateral views and extracts complementary features to model lesion inherent 3D structure. The multi-scale kernel pooling (MKP) module contrasts contralateral views with added misalignment tolerance. Finally, the logic guided fusion (LGF) module fuses multi-view features by enhancing logic modeling capacity. Experimental results on both the public DDSM dataset and the in-house multi-center dataset demonstrate that the proposed method has achieved state-of-the-art performance.
由于乳腺癌风险高,检测包括肿块、结构扭曲和不对称在内的乳腺软组织病变非常重要。大多数现有的基于深度学习的方法仅使用单侧图像来检测病变。然而,多视角乳腺钼靶图像提供了高度相关且互补的信息,有助于使临床分析更加全面和可靠。在本文中,我们提出了一种用于乳腺软组织病变检测的多视角网络,称为C-Net(比较与对比,C),它融合了不同视角的信息。所提出的模型包含以下三个模块。空间上下文增强(SCE)模块比较同侧视图并提取互补特征,以对病变的固有三维结构进行建模。多尺度核池化(MKP)模块对比对侧视图,并增加了对齐误差容忍度。最后,逻辑引导融合(LGF)模块通过增强逻辑建模能力来融合多视角特征。在公共DDSM数据集和内部多中心数据集上的实验结果表明,所提出的方法取得了领先的性能。