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基于康普顿散射的瞬时伽马成像的 PSF 重建。

PSF reconstruction for Compton-based prompt gamma imaging.

机构信息

Medical Physics Research Center, Institute for Radiological Research, Chang Gung University and Chang Gung Memorial Hospital, 259 Wen-Hwa 1st Road, Kwei-Shan, Taoyuan County 33302, Taiwan. Department of Radiation Oncology, Chang Gung Memorial Hospital, No. 5 Fu-Shin Street, Kwei-Shan, Taoyuan County 33302, Taiwan.

出版信息

Phys Med Biol. 2018 Jan 26;63(3):035015. doi: 10.1088/1361-6560/aa9e74.

Abstract

Compton-based prompt gamma (PG) imaging has been proposed for in vivo range verification in proton therapy. However, several factors degrade the image quality of PG images, some of which are due to inherent properties of a Compton camera such as spatial resolution and energy resolution. Moreover, Compton-based PG imaging has a spatially variant resolution loss. In this study, we investigate the performance of the list-mode ordered subset expectation maximization algorithm with a shift-variant point spread function (LM-OSEM-SV-PSF) model. We also evaluate how well the PG images reconstructed using an SV-PSF model reproduce the distal falloff of the proton beam. The SV-PSF parameters were estimated from simulation data of point sources at various positions. Simulated PGs were produced in a water phantom irradiated with a proton beam. Compared to the LM-OSEM algorithm, the LM-OSEM-SV-PSF algorithm improved the quality of the reconstructed PG images and the estimation of PG falloff positions. In addition, the 4.44 and 5.25 MeV PG emissions can be accurately reconstructed using the LM-OSEM-SV-PSF algorithm. However, for the 2.31 and 6.13 MeV PG emissions, the LM-OSEM-SV-PSF reconstruction provides limited improvement. We also found that the LM-OSEM algorithm followed by a shift-variant Richardson-Lucy deconvolution could reconstruct images with quality visually similar to the LM-OSEM-SV-PSF-reconstructed images, while requiring shorter computation time.

摘要

康普顿基元伽马(PG)成像是质子治疗中体内射程验证的一种方法。然而,有几个因素会降低 PG 图像的质量,其中一些是康普顿相机固有的特性造成的,如空间分辨率和能量分辨率。此外,基于康普顿的 PG 成像具有空间变化的分辨率损失。在这项研究中,我们研究了具有移位变化点扩散函数(SV-PSF)模型的列表模式有序子集期望最大化算法(LM-OSEM-SV-PSF)的性能。我们还评估了使用 SV-PSF 模型重建的 PG 图像在多大程度上再现质子束的远端下降。SV-PSF 参数是从不同位置的点源模拟数据中估计出来的。在用水体模体辐照质子束的情况下,在水模体中产生模拟 PG。与 LM-OSEM 算法相比,LM-OSEM-SV-PSF 算法提高了重建 PG 图像的质量和 PG 下降位置的估计。此外,使用 LM-OSEM-SV-PSF 算法可以准确重建 4.44 和 5.25 MeV 的 PG 发射。然而,对于 2.31 和 6.13 MeV 的 PG 发射,LM-OSEM-SV-PSF 重建提供的改善有限。我们还发现,LM-OSEM 算法随后进行移位变化的 Richardson-Lucy 反卷积可以重建质量与 LM-OSEM-SV-PSF 重建图像视觉相似的图像,同时需要更短的计算时间。

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