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Total variation superiorization schemes in proton computed tomography image reconstruction

机译:质子计算机断层扫描图像重建中的总变异优化方案

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摘要

>Purpose: Iterative projection reconstruction algorithms are currently the preferred reconstruction method in proton computed tomography (pCT). However, due to inconsistencies in the measured data arising from proton energy straggling and multiple Coulomb scattering, the noise in the reconstructed image increases with successive iterations. In the current work, the authors investigated the use of total variation superiorization (TVS) schemes that can be applied as an algorithmic add-on to perturbation-resilient iterative projection algorithms for pCT image reconstruction.>Methods: The block-iterative diagonally relaxed orthogonal projections (DROP) algorithm was used for reconstructing GEANT4 Monte Carlo simulated pCT data sets. Two TVS schemes added on to DROP were investigated; the first carried out the superiorization steps once per cycle and the second once per block. Simplifications of these schemes, involving the elimination of the computationally expensive feasibility proximity checking step of the TVS framework, were also investigated. The modulation transfer function and contrast discrimination function were used to quantify spatial and density resolution, respectively.>Results: With both TVS schemes, superior spatial and density resolution was achieved compared to the standard DROP algorithm. Eliminating the feasibility proximity check improved the image quality, in particular image noise, in the once-per-block superiorization, while also halving image reconstruction time. Overall, the greatest image quality was observed when carrying out the superiorization once per block and eliminating the feasibility proximity check.>Conclusions: The low-contrast imaging made possible with TVS holds a promise for its incorporation into future pCT studies.
机译:>目的:迭代投影重建算法是目前质子计算机断层扫描(pCT)中首选的重建方法。但是,由于质子能量散布和多次库仑散射引起的测量数据不一致,重建图像中的噪声会随着连续的迭代而增加。在当前的工作中,作者研究了总变异优化(TVS)方案的使用,该方案可以用作pCT图像重建的摄动弹性迭代投影算法的算法附件。>方法:块迭代对角松弛正交投影(DROP)算法用于重建GEANT4蒙特卡洛模拟的pCT数据集。研究了添加到DROP上的两种TVS方案;第一个执行每个周期一次的优化步骤,第二个执行每个块一次。还研究了这些方案的简化,包括消除了TVS框架的计算量大的可行性接近检查步骤。 >结果:使用这两种TVS方案,与标准DROP算法相比,可以实现更好的空间和密度分辨率。消除了可行性的接近性检查可以在一次块优化中提高图像质量,尤其是图像噪声,同时还可以将图像重建时间减少一半。总体而言,每块进行一次优化并消除可行性接近检查时,观察到的图像质量最高。>结论: TVS带来的低对比度成像为将其纳入未来的pCT带来了希望学习。

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