IEEE Trans Med Imaging. 2019 Dec;38(12):2903-2913. doi: 10.1109/TMI.2019.2917258. Epub 2019 May 17.
The wide applications of X-ray computed tomography (CT) bring low-dose CT (LDCT) into a clinical prerequisite, but reducing the radiation exposure in CT often leads to significantly increased noise and artifacts, which might lower the judgment accuracy of radiologists. In this paper, we put forward a domain progressive 3D residual convolution network (DP-ResNet) for the LDCT imaging procedure that contains three stages: sinogram domain network (SD-net), filtered back projection (FBP), and image domain network (ID-net). Though both are based on the residual network structure, the SD-net and ID-net provide complementary effect on improving the final LDCT quality. The experimental results with both simulated and real projection data show that this domain progressive deep-learning network achieves significantly improved performance by combing the network processing in the two domains.
X 射线计算机断层扫描(CT)的广泛应用将低剂量 CT(LDCT)引入临床必备条件,但降低 CT 的辐射暴露往往会导致噪声和伪影显著增加,这可能会降低放射科医生的判断准确性。在本文中,我们提出了一种用于 LDCT 成像过程的域渐进式 3D 残差卷积网络(DP-ResNet),该网络包含三个阶段:正弦图域网络(SD-net)、滤波反投影(FBP)和图像域网络(ID-net)。虽然两者都基于残差网络结构,但 SD-net 和 ID-net 在提高最终 LDCT 质量方面具有互补作用。使用模拟和真实投影数据的实验结果表明,通过结合两个域中的网络处理,这种域渐进式深度学习网络可显著提高性能。