Center for Advanced Medical Imaging Technology, Shanghai Advanced Research Institute, Chinese Academy of Sciences, No.99 Haike Road, Shanghai 201200, China; University of Chinese Academy of Sciences, No.19 Yuquan Road, Beijing 100049, China; Shanghai United Imaging Healthcare Co., Ltd., No. 2258 Chengbei Road, Shanghai 201807, China.
Department of Radiology, Shanghai Cancer Hospital of Fudan University, No. 270 DongAn Road, Shanghai 200032, China.
Magn Reson Imaging. 2021 Oct;82:31-41. doi: 10.1016/j.mri.2021.06.017. Epub 2021 Jun 18.
Segmentation of the whole breast and fibroglandular tissue (FGT) is important for quantitatively analyzing the breast cancer risk in the dynamic contrast-enhanced magnetic resonance (DCE-MR) images. The purpose of this study is to improve the accuracy and efficiency of the segmentation of the whole breast and FGT in 3-D fat-suppressed DCE-MR images with a versatile deep learning (DL) framework.
We randomly collected 100 breast DCE-MR scans from Shanghai Cancer Hospital of Fudan University. The MR scans in the dataset were different in both the spatial resolution and the MR scanners employed. Furthermore, four breast density categories were assessed by radiologists based on Breast Imaging Reporting and Data System (BI-RADS) of American College of Radiology. The dataset was separated into the training and the testing sets, while keeping a balanced distribution of scans with different imaging parameters and density categories. The nnU-Net has been recently proposed to automatically adapt preprocessing strategies and network architectures for a given medical image dataset, thus showing a great potential in the systematic adaptation of DL methods to different datasets. In this study, we applied the nnU-Net to segment the whole breast and FGT in 3-D fat-suppressed DCE-MR images. Five-fold cross validation was employed to train and validate the segmentation method.
The segmentation performance was evaluated with the volume and surface agreement metrics between the DL-based automatic and the manually delineated masks, as quantified with the following measures: the average Dice volume overlap (0.968 ± 0.017 and 0.877 ± 0.081), the average surface distances (0.201 ± 0.080 mm and 0.310 ± 0.043 mm), and the Pearson correlation coefficient of masks (0.995 and 0.972) between the automatic and the manually delineated masks, as calculated for the whole breast and the FGT segmentation, respectively. The correlation coefficient between the breast densities obtained with the DL-based segmentation and the manual delineation was 0.981. There was a positive bias of 0.8% (DL-based relative to manual) in breast density measurement with the Bland-Altman plot. The execution time of the DL-based segmentation was approximately 20 s for the whole breast segmentation and 15 s for the FGT segmentation.
Our DL-based segmentation framework using nnU-Net could robustly achieve high accuracy and efficiency across variable MR imaging settings without extra pre- or post-processing procedures. It would be useful for developing DCE-MR-based CAD systems to quantify breast cancer risk and to be integrated into the clinical workflow.
分割整个乳房和纤维腺体组织(FGT)对于定量分析动态对比增强磁共振(DCE-MR)图像中的乳腺癌风险非常重要。本研究旨在使用多功能深度学习(DL)框架提高 3-D 脂肪抑制 DCE-MR 图像中整个乳房和 FGT 分割的准确性和效率。
我们从复旦大学附属肿瘤医院随机收集了 100 例乳腺 DCE-MR 扫描。该数据集的 MR 扫描在空间分辨率和使用的磁共振扫描仪方面存在差异。此外,根据美国放射学院的乳腺成像报告和数据系统(BI-RADS),放射科医生评估了四个乳腺密度类别。数据集分为训练集和测试集,同时保持不同成像参数和密度类别的扫描平衡分布。nnU-Net 最近被提出用于自动适应给定医学图像数据集的预处理策略和网络架构,因此在将 DL 方法系统地适应不同数据集方面具有很大的潜力。在这项研究中,我们应用 nnU-Net 对 3-D 脂肪抑制 DCE-MR 图像中的整个乳房和 FGT 进行分割。采用五折交叉验证来训练和验证分割方法。
使用基于 DL 的自动分割与手动勾画掩模之间的体积和表面一致性指标评估分割性能,通过以下指标进行量化:平均 Dice 体积重叠(0.968±0.017 和 0.877±0.081),平均表面距离(0.201±0.080mm 和 0.310±0.043mm),以及自动分割和手动勾画掩模之间的掩模 Pearson 相关系数(0.995 和 0.972),分别用于整个乳房和 FGT 分割。基于 DL 的分割和手动勾画获得的乳腺密度之间的相关系数为 0.981。基于 DL 的密度测量存在 0.8%(相对于手动)的正偏差,Bland-Altman 图显示。整个乳房分割的 DL 基于分割的执行时间约为 20 秒,FGT 分割的执行时间约为 15 秒。
我们使用 nnU-Net 的基于 DL 的分割框架可以在没有额外的预处理或后处理步骤的情况下,在各种磁共振成像设置下稳健地实现高精度和高效率。它将有助于开发基于 DCE-MR 的 CAD 系统来量化乳腺癌风险,并集成到临床工作流程中。