Department of Medical Imaging, Radboud University Medical Center, the Netherlands; Department of Radiation Oncology, Netherlands Cancer Institute, the Netherlands.
Department of Medical Imaging, Radboud University Medical Center, the Netherlands.
Med Image Anal. 2021 Jul;71:102061. doi: 10.1016/j.media.2021.102061. Epub 2021 Apr 15.
The two-dimensional nature of mammography makes estimation of the overall breast density challenging, and estimation of the true patient-specific radiation dose impossible. Digital breast tomosynthesis (DBT), a pseudo-3D technique, is now commonly used in breast cancer screening and diagnostics. Still, the severely limited 3rd dimension information in DBT has not been used, until now, to estimate the true breast density or the patient-specific dose. This study proposes a reconstruction algorithm for DBT based on deep learning specifically optimized for these tasks. The algorithm, which we name DBToR, is based on unrolling a proximal-dual optimization method. The proximal operators are replaced with convolutional neural networks and prior knowledge is included in the model. This extends previous work on a deep learning-based reconstruction model by providing both the primal and the dual blocks with breast thickness information, which is available in DBT. Training and testing of the model were performed using virtual patient phantoms from two different sources. Reconstruction performance, and accuracy in estimation of breast density and radiation dose, were estimated, showing high accuracy (density <±3%; dose <±20%) without bias, significantly improving on the current state-of-the-art. This work also lays the groundwork for developing a deep learning-based reconstruction algorithm for the task of image interpretation by radiologists.
乳腺摄影的二维性质使得总体乳腺密度的估计具有挑战性,并且无法估计真正的患者特异性辐射剂量。数字乳腺断层合成术(DBT),一种伪 3D 技术,现在常用于乳腺癌筛查和诊断。尽管如此,DBT 中严重受限的 3 维信息直到现在才被用于估计真实的乳腺密度或患者特异性剂量。本研究提出了一种基于深度学习的 DBT 重建算法,专门针对这些任务进行了优化。该算法名为 DBToR,基于展开近端对偶优化方法。近端算子被替换为卷积神经网络,并在模型中包含了先验知识。这扩展了以前基于深度学习的重建模型的工作,为初级和对偶块都提供了 DBT 中可用的乳腺厚度信息。该模型的训练和测试使用了来自两个不同来源的虚拟患者体模。对重建性能以及乳腺密度和辐射剂量估计的准确性进行了评估,结果显示精度高(密度误差 <±3%;剂量误差 <±20%),没有偏差,明显优于当前的最先进水平。这项工作还为开发基于深度学习的放射科医生图像解释任务的重建算法奠定了基础。