Litcius/Paper detail

An effective sinogram inpainting for complementary limited-angle dual-energy computed tomography imaging using generative adversarial networks

Yizhong Wang, Wenkun Zhang, Ailong Cai, Linyuan Wang, Chao Tang, Zhiwei Feng, Lei Li, Ningning Liang, Bin Yan

2020Journal of X-Ray Science and Technology17 citationsDOI

Abstract

Dual-energy computed tomography (DECT) provides more anatomical and functional information for image diagnosis. Presently, the popular DECT imaging systems need to scan at least full angle (i.e., 360°). In this study, we propose a DECT using complementary limited-angle scan (DECT-CL) technology to reduce the radiation dose and compress the spatial distribution of the imaging system. The dual-energy total scan is 180°, where the low- and high-energy scan range is the first 90° and last 90°, respectively. We describe this dual limited-angle problem as a complementary limited-angle problem, which is challenging to obtain high-quality images using traditional reconstruction algorithms. Furthermore, a complementary-sinogram-inpainting generative adversarial networks (CSI-GAN) with a sinogram loss is proposed to inpainting sinogram to suppress the singularity of truncated sinogram. The sinogram loss focuses on the data distribution of the generated sinogram while approaching the target sinogram. We use the simultaneous algebraic reconstruction technique namely, a total variable (SART-TV) algorithms for image reconstruction. Then, taking reconstructed CT images of pleural and cranial cavity slices as examples, we evaluate the performance of our method and numerically compare different methods based on root mean square error (RMSE), peak signal-to-noise ratio (PSNR) and structural similarity (SSIM). Compared with traditional algorithms, the proposed network shows advantages in numerical terms. Compared with Patch-GAN, the proposed network can also reduce the RMSE of the reconstruction results by an average of 40% and increase the PSNR by an average of 26%. In conclusion, both qualitative and quantitative comparison and analysis demonstrate that our proposed method achieves a good artifact suppression effect and can suitably solve the complementary limited-angle problem.

Topics & Concepts

Artificial intelligenceMean squared errorInpaintingIterative reconstructionImage qualityComputer scienceEnergy (signal processing)Deep learningMathematicsComputer visionAlgorithmPattern recognition (psychology)Image (mathematics)StatisticsAdvanced X-ray and CT ImagingMedical Imaging Techniques and ApplicationsAdvanced X-ray Imaging Techniques
An effective sinogram inpainting for complementary limited-angle dual-energy computed tomography imaging using generative adversarial networks | Litcius