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Helical CT Reconstruction from Sparse-view Data through Exploiting the 3D Anatomical Structure Sparsity

Yongbo Wang, Gaofeng Chen, Xi Tao, Zhaoying Bian, Dong Zeng, Habib Zaidi, Ji He, Jianhua Ma

2021IEEE Access44 citationsDOIOpen Access PDF

Abstract

Sparse-view scanning has great potential for realizing ultra-low-dose computed tomography (CT) examination. However, noise and artifacts in reconstructed images are big obstacles, which must be handled to maintain the diagnosis accuracy. Existing sparse-view CT reconstruction algorithms were usually designed for circular imaging geometry, whereas the helical imaging geometry is commonly adopted in the clinic. In this paper, we show that the sparse-view helical CT (SHCT) images contain not only noise and artifacts but also severe anatomical distortions. These troubles reduce the applicability of existing sparse-view CT reconstruction algorithms. To deal with this problem, we analyzed the three-dimensional (3D) anatomical structure sparsity in SHCT images. Based on the analyses, we proposed a tensor decomposition and anisotropic total variation regularization model (TDATV) for SHCT reconstruction. Specifically, the tensor decomposition works on nonlocal cube groups to exploit the anatomical structure redundancy; the anisotropic total variation works on the whole volume to exploit the structural piecewise-smooth. Finally, an alternating direction method of multipliers is developed to solve the TDATV model. To our knowledge, the paper presents the first work investigating the reconstruction of sparse-view helical CT. The TDATV model was validated through digital phantom, physical phantom, and clinical patient studies. The results reveal that SHCT could serve as a potential solution for reducing HCT radiation dose to ultra-low level by using the proposed TDATV model.

Topics & Concepts

Iterative reconstructionImaging phantomComputer scienceArtificial intelligenceMedical imagingPiecewiseRedundancy (engineering)Computer visionRegularization (linguistics)AlgorithmPattern recognition (psychology)MathematicsNuclear medicineOperating systemMedicineMathematical analysisMedical Imaging Techniques and ApplicationsAdvanced MRI Techniques and ApplicationsAdvanced Neuroimaging Techniques and Applications