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基于生成对抗网络的 CT 成像正弦图超分辨率。

Generative adversarial network-based sinogram super-resolution for computed tomography imaging.

机构信息

Henan Key Laboratory of Imaging and Intelligent Processing, PLA Strategic Support Force Information Engineering University, Zhengzhou, People's Republic of China.

出版信息

Phys Med Biol. 2020 Dec 18;65(23):235006. doi: 10.1088/1361-6560/abc12f.

DOI:10.1088/1361-6560/abc12f
PMID:33053522
Abstract

Compared with the conventional 1×1 acquisition mode of projection in computed tomography (CT) image reconstruction, the 2×2 acquisition mode improves the collection efficiency of the projection and reduces the x-ray exposure time. However, the collected projection based on the 2×2 acquisition mode has low resolution (LR) and the reconstructed image quality is poor, thus limiting the use of this mode in CT imaging systems. In this study, a novel sinogram-super-resolution (SR) generative adversarial network model is proposed to obtain high-resolution (HR) sinograms from LR sinograms, thereby improving the reconstruction image quality under the 2×2 acquisition mode. The proposed generator is based on the residual network for LR sinogram feature extraction and SR sinogram generation. A relativistic discriminator is designed to render the network capable of obtaining more realistic SR sinograms. Moreover, we combine the cycle consistency loss, sinogram domain loss, and reconstruction image domain loss in the total loss function to supervise SR sinogram generation. Then, a trained model can be obtained by inputting the paired LR/HR sinograms into the network. Finally, the classic filtered-back-projection reconstruction algorithm is used for CT image reconstruction based on the generated SR sinogram. The qualitative and quantitative results of evaluations on digital and real data illustrate that the proposed model not only obtains clean SR sinograms from noisy LR sinograms but also outperforms its counterparts.

摘要

与传统的计算机断层扫描 (CT) 图像重建中 1×1 投影采集模式相比,2×2 采集模式提高了投影的采集效率,减少了 X 射线曝光时间。然而,基于 2×2 采集模式采集的投影具有较低的分辨率 (LR),重建图像质量较差,因此限制了该模式在 CT 成像系统中的使用。在这项研究中,提出了一种新颖的谱线超分辨率 (SR) 生成对抗网络模型,从 LR 谱线中获得高分辨率 (HR) 谱线,从而提高 2×2 采集模式下的重建图像质量。所提出的生成器基于残差网络进行 LR 谱线特征提取和 SR 谱线生成。设计了一个相对判别器,使网络能够获得更逼真的 SR 谱线。此外,我们在总损失函数中结合了循环一致性损失、谱线域损失和重建图像域损失,以监督 SR 谱线生成。然后,通过将成对的 LR/HR 谱线输入到网络中,可以获得训练好的模型。最后,基于生成的 SR 谱线,使用经典的滤波反投影重建算法进行 CT 图像重建。数字和真实数据的定性和定量评估结果表明,所提出的模型不仅可以从噪声 LR 谱线中获得干净的 SR 谱线,而且性能优于其对比模型。

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