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Hybrid-Domain Neural Network Processing for Sparse-View CT Reconstruction

Dianlin Hu, Jin Liu, Tianling Lv, Qianlong Zhao, Yikun Zhang, Guotao Quan, J. J. Feng, Yang Chen, Limin Luo

2020IEEE Transactions on Radiation and Plasma Medical Sciences110 citationsDOI

Abstract

X-ray computed tomography (CT) is one of the most widely used tools in medical imaging, industrial nondestructive testing, lesion detection, and other applications. However, decreasing the projection number to lower the X-ray radiation dose usually leads to severe streak artifacts. To improve the quality of the images reconstructed from sparse-view projection data, we developed a hybrid-domain neural network (HDNet) processing for sparse-view CT (SVCT) reconstruction in this study. The HDNet decomposes the SVCT reconstruction problem into two stages and each stage focuses on one mission, which reduces the learning difficulty of the entire network. Experiments based on the simulated and clinical datasets are performed to demonstrate the performance of the proposed method. Compared with other competitive algorithms, quantitative and qualitative results show that the proposed method makes a great improvement on artifact suppression, tiny structure restoration, and contrast retention.

Topics & Concepts

StreakComputer scienceArtificial intelligenceProjection (relational algebra)Artificial neural networkIterative reconstructionDomain (mathematical analysis)Artifact (error)Pattern recognition (psychology)Image qualityComputer visionAlgorithmImage (mathematics)MathematicsOpticsMathematical analysisPhysicsMedical Imaging Techniques and ApplicationsAdvanced X-ray and CT ImagingAdvanced X-ray Imaging Techniques
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