GPU-based Fast Cone Beam CT Reconstruction from Undersampled and Noisy Projection Data via Total Variation
Xun Jia, Yifei Lou, Ruijiang Li, William Y. Song, and Steve B. Jiang

TL;DR
This paper presents a GPU-accelerated algorithm for cone-beam CT reconstruction from undersampled and noisy data, significantly reducing radiation dose and reconstruction time for clinical applications.
Contribution
Developed a fast, GPU-based iterative reconstruction method using total variation regularization and multi-grid techniques for low-dose CBCT imaging.
Findings
Achieves 36-72 times dose reduction compared to standard protocols.
Reconstructs images with satisfactory quality using only 20-40 projections.
Reconstruction time is approximately 77-130 seconds on a GPU.
Abstract
Purpose: Cone-beam CT (CBCT) plays an important role in image guided radiation therapy (IGRT). However, the large radiation dose from serial CBCT scans in most IGRT procedures raises a clinical concern, especially for pediatric patients who are essentially excluded from receiving IGRT for this reason. The goal of this work is to develop a fast GPU-based algorithm to reconstruct CBCT from undersampled and noisy projection data so as to lower the imaging dose. Methods: The CBCT is reconstructed by minimizing an energy functional consisting of a data fidelity term and a total variation regularization term. We developed a GPU-friendly version of the forward-backward splitting algorithm to solve this model. A multi-grid technique is also employed. Results: It is found that 20~40 x-ray projections are sufficient to reconstruct images with satisfactory quality for IGRT. The reconstruction time…
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