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用于PET成像中优化定量分析的广义点扩散函数建模

Generalized PSF modeling for optimized quantitation in PET imaging.

作者信息

Ashrafinia Saeed, Mohy-Ud-Din Hassan, Karakatsanis Nicolas A, Jha Abhinav K, Casey Michael E, Kadrmas Dan J, Rahmim Arman

机构信息

Department of Electrical and Computer Engineering, Whiting School of Engineering, Johns Hopkins University, Baltimore, MD, United States of America. Department of Radiology and Radiological Sciences, School of Medicine, Johns Hopkins University, Baltimore, MD, United States of America.

出版信息

Phys Med Biol. 2017 Jun 21;62(12):5149-5179. doi: 10.1088/1361-6560/aa6911. Epub 2017 Mar 24.

Abstract

Point-spread function (PSF) modeling offers the ability to account for resolution degrading phenomena within the PET image generation framework. PSF modeling improves resolution and enhances contrast, but at the same time significantly alters image noise properties and induces edge overshoot effect. Thus, studying the effect of PSF modeling on quantitation task performance can be very important. Frameworks explored in the past involved a dichotomy of PSF versus no-PSF modeling. By contrast, the present work focuses on quantitative performance evaluation of standard uptake value (SUV) PET images, while incorporating a wide spectrum of PSF models, including those that under- and over-estimate the true PSF, for the potential of enhanced quantitation of SUVs. The developed framework first analytically models the true PSF, considering a range of resolution degradation phenomena (including photon non-collinearity, inter-crystal penetration and scattering) as present in data acquisitions with modern commercial PET systems. In the context of oncologic liver FDG PET imaging, we generated 200 noisy datasets per image-set (with clinically realistic noise levels) using an XCAT anthropomorphic phantom with liver tumours of varying sizes. These were subsequently reconstructed using the OS-EM algorithm with varying PSF modelled kernels. We focused on quantitation of both SUV and SUV, including assessment of contrast recovery coefficients, as well as noise-bias characteristics (including both image roughness and coefficient of-variability), for different tumours/iterations/PSF kernels. It was observed that overestimated PSF yielded more accurate contrast recovery for a range of tumours, and typically improved quantitative performance. For a clinically reasonable number of iterations, edge enhancement due to PSF modeling (especially due to over-estimated PSF) was in fact seen to lower SUV bias in small tumours. Overall, the results indicate that exactly matched PSF modeling does not offer optimized PET quantitation, and that PSF overestimation may provide enhanced SUV quantitation. Furthermore, generalized PSF modeling may provide a valuable approach for quantitative tasks such as treatment-response assessment and prognostication.

摘要

点扩散函数(PSF)建模能够在正电子发射断层扫描(PET)图像生成框架内解释分辨率下降现象。PSF建模可提高分辨率并增强对比度,但同时会显著改变图像噪声特性并引发边缘过冲效应。因此,研究PSF建模对定量任务性能的影响可能非常重要。过去探索的框架涉及PSF建模与无PSF建模的二分法。相比之下,当前工作专注于标准摄取值(SUV)PET图像的定量性能评估,同时纳入了广泛的PSF模型,包括那些低估和高估真实PSF的模型,以探讨增强SUV定量的潜力。所开发的框架首先对真实PSF进行分析建模,考虑了一系列在现代商用PET系统数据采集中出现的分辨率下降现象(包括光子非共线性、晶体间穿透和散射)。在肿瘤肝脏FDG PET成像的背景下,我们使用具有不同大小肝肿瘤的XCAT拟人化体模,为每个图像集生成200个有噪声的数据集(具有临床现实的噪声水平)。随后使用具有不同PSF建模内核的有序子集期望最大化(OS-EM)算法对这些数据集进行重建。我们专注于对SUV和SUV的定量,包括评估对比度恢复系数以及噪声偏差特性(包括图像粗糙度和变异系数),针对不同的肿瘤/迭代次数/PSF内核。结果发现,高估的PSF在一系列肿瘤中产生了更准确的对比度恢复,并且通常改善了定量性能。对于临床合理的迭代次数,实际上观察到由于PSF建模(特别是由于高估的PSF)导致的边缘增强降低了小肿瘤中的SUV偏差。总体而言,结果表明精确匹配的PSF建模并不能提供优化的PET定量,并且PSF高估可能会增强SUV定量。此外,广义PSF建模可能为诸如治疗反应评估和预后等定量任务提供一种有价值的方法。

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