A Global Constraint to Improve CT Reconstruction Under Non-Ideal Conditions

Z Shu, A Entezari - arXiv preprint arXiv:2212.09654, 2022 - arxiv.org
Z Shu, A Entezari
arXiv preprint arXiv:2212.09654, 2022arxiv.org
Background and Objective: The strong demand for medical imaging applications leads to
the popularity of the CT reconstruction problem. Researchers proposed multiple constraints
to tackle none ideal factors in CT reconstruction such as sparse-view, limited-angle, and low-
dose conditions. Most of these constraints such as total variation are local constraints
focusing on the relationship between a pixel and its neighbors. In this paper, we propose a
new constraint utilizing the global prior of CT images to greatly reduce the streak artifacts …
Background and Objective
The strong demand for medical imaging applications leads to the popularity of the CT reconstruction problem. Researchers proposed multiple constraints to tackle none ideal factors in CT reconstruction such as sparse-view, limited-angle, and low-dose conditions. Most of these constraints such as total variation are local constraints focusing on the relationship between a pixel and its neighbors. In this paper, we propose a new constraint utilizing the global prior of CT images to greatly reduce the streak artifacts and further improve the reconstruction accuracy.
Methods
A CT image of the human body contains a limited number of different types of tissues, so pixels in CT images can be grouped into several groups according to their corresponding types. In our work, we focus on the composition classification for individual pixels and utilize it as a global prior, which differs from priors utilized by most current constraints. We propose segmenting pixels based on their gray levels during the reconstruction process, and forcing pixels in the same group to have similar gray levels.
Results
Our experiments on the Shepp-Logan phantom and two real CT images from different benchmarks show that the proposed constraint can help the conventional local constraints further improve the reconstruction results under sparse-view, limited-angle, and low-dose conditions.
Conclusions
Different from most current constraints focusing on the local prior, our proposed constraint only utilizes the global prior of CT images. In that case, our proposed constraint can collaborate with most local constraints and improve the reconstruction quality significantly. Furthermore, the proposed constraint also has the potential for further improvement, as the composition classification can be done with some more delicate methods, such as neural network related semantic segmentation algorithms.
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