GPU-based Low Dose CT Reconstruction via Edge-preserving Total Variation Regularization
Zhen Tian, Xun Jia, Kehong Yuan, Tinsu Pan, Steve B. Jiang

TL;DR
This paper introduces a GPU-accelerated iterative CT reconstruction method using edge-preserving total variation regularization to reduce radiation dose while maintaining image quality, especially fine details.
Contribution
It develops an edge-preserving TV regularization technique and implements it on GPU, improving low-dose CT image reconstruction by better preserving edges and fine structures.
Findings
Outperforms conventional FBP and standard TV methods in artifact suppression.
Preserves fine structural details better than traditional TV regularization.
Achieves faster reconstruction times via GPU implementation.
Abstract
High radiation dose in CT scans increases a lifetime risk of cancer and has become a major clinical concern. Recently, iterative reconstruction algorithms with Total Variation (TV) regularization have been developed to reconstruct CT images from highly undersampled data acquired at low mAs levels in order to reduce the imaging dose. Nonetheless, TV regularization may lead to over-smoothed images and lost edge information. To solve this problem, in this work we develop an iterative CT reconstruction algorithm with edge-preserving TV regularization to reconstruct CT images from highly undersampled data obtained at low mAs levels. The CT image is reconstructed by minimizing an energy consisting of an edge-preserving TV norm and a data fidelity term posed by the x-ray projections. The edge-preserving TV term is proposed to preferentially perform smoothing only on non-edge part of the image…
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