MR信息PET图像重建方法的相互比较。

Medical physics Pub Date : 2019-11-01 Epub Date: 2019-10-04 DOI:10.1002/mp.13812
James Bland, Abolfazl Mehranian, Martin A Belzunce, Sam Ellis, Casper da Costa-Luis, Colm J McGinnity, Alexander Hammers, Andrew J Reader
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引用次数: 0

摘要

目的:已经开发了许多用于正电子发射断层扫描(PET)的图像重建方法,这些方法结合了磁共振(MR)成像结构信息,产生了具有改进的噪声抑制和减少部分体积效应的重建图像。然而,MR结构信息的影响也增加了仅存在于PET数据中的结构(PET独特区域)被抑制或偏置的可能性。为了解决这一问题,已经提出了MR知情方法的进一步发展,例如,通过在迭代重建过程中包括当前重建的PET图像和MR图像。在本工作中,比较了许多核方法和最大后验(MAP)方法,目的是识别能够在抑制噪声和保留PET数据中存在的独特特征之间进行有利权衡的方法。方法:研究的重建方法为:MR知情的常规核方法和空间紧凑核方法,分别称为KEM和KEM最大值稀疏化(LVS);MR告知Bowsher和高斯MR引导的MAP方法;以及基于PET MR的混合内核和锐钛矿函数MAP方法。与后平滑最大似然期望最大化(MLEM)相比,研究了所有方法在改进整个大脑区域的重建和PET独特区域之间的权衡,并根据结构相似性指数(SSIM)、归一化均方根误差(NRMSE)、偏差和标准差进行了评估。使用模拟BrainWeb(10个噪声实现)和真实[18F]氟脱氧葡萄糖(FDG)三维数据集。真实[18F]FDG数据集用模拟肿瘤进行了扩展,以允许比较PET-MR差异的已知区域的重建方法,并在全计数(100%)和减少计数(10%)水平下进行评估。结果:对于高计数模拟和真实数据研究,在实现全脑和PET独特区域重建的最佳权衡方面,锐钛矿功能MAP方法比正在研究的其他方法(MR知情、PET MR知情和后平滑MLEM)表现更好,根据SSIM、NRMSE和偏差与标准差进行评估。在锐钛矿功能MAP方法中包含PET信息使PET独特区域的重建能够获得与非光滑MLEM类似的低水平的偏差,同时适度提高低水平正则化的全脑图像质量。然而,对于低计数的模拟数据集,由于正则化项中包含有噪声的PET信息,锐钛矿函数MAP方法表现不佳。对于低计数模拟数据集,KEM LVS和在较小程度上,HKEM在实现整个大脑和PET独特区域重建的最佳权衡方面比正在研究的其他方法表现更好,根据SSIM、NRMSE和偏差与标准偏差进行评估。结论:对于噪声数据的重建,在SSIM和NRMSE的图像质量指标方面,多种MR知情方法产生了有利的全脑与PET独特区域权衡,大大优于后平滑MLEM的全图像去噪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Intercomparison of MR-informed PET image reconstruction methods.

Intercomparison of MR-informed PET image reconstruction methods.

Intercomparison of MR-informed PET image reconstruction methods.

Intercomparison of MR-informed PET image reconstruction methods.

Purpose: Numerous image reconstruction methodologies for positron emission tomography (PET) have been developed that incorporate magnetic resonance (MR) imaging structural information, producing reconstructed images with improved suppression of noise and reduced partial volume effects. However, the influence of MR structural information also increases the possibility of suppression or bias of structures present only in the PET data (PET-unique regions). To address this, further developments for MR-informed methods have been proposed, for example, through inclusion of the current reconstructed PET image, alongside the MR image, in the iterative reconstruction process. In this present work, a number of kernel and maximum a posteriori (MAP) methodologies are compared, with the aim of identifying methods that enable a favorable trade-off between the suppression of noise and the retention of unique features present in the PET data.

Methods: The reconstruction methods investigated were: the MR-informed conventional and spatially compact kernel methods, referred to as KEM and KEM largest value sparsification (LVS) respectively; the MR-informed Bowsher and Gaussian MR-guided MAP methods; and the PET-MR-informed hybrid kernel and anato-functional MAP methods. The trade-off between improving the reconstruction of the whole brain region and the PET-unique regions was investigated for all methods in comparison with postsmoothed maximum likelihood expectation maximization (MLEM), evaluated in terms of structural similarity index (SSIM), normalized root mean square error (NRMSE), bias, and standard deviation. Both simulated BrainWeb (10 noise realizations) and real [18 F] fluorodeoxyglucose (FDG) three-dimensional datasets were used. The real [18 F]FDG dataset was augmented with simulated tumors to allow comparison of the reconstruction methodologies for the case of known regions of PET-MR discrepancy and evaluated at full counts (100%) and at a reduced (10%) count level.

Results: For the high-count simulated and real data studies, the anato-functional MAP method performed better than the other methods under investigation (MR-informed, PET-MR-informed and postsmoothed MLEM), in terms of achieving the best trade-off for the reconstruction of the whole brain and PET-unique regions, assessed in terms of the SSIM, NRMSE, and bias vs standard deviation. The inclusion of PET information in the anato-functional MAP method enables the reconstruction of PET-unique regions to attain similarly low levels of bias as unsmoothed MLEM, while moderately improving the whole brain image quality for low levels of regularization. However, for low count simulated datasets the anato-functional MAP method performs poorly, due to the inclusion of noisy PET information in the regularization term. For the low counts simulated dataset, KEM LVS and to a lesser extent, HKEM performed better than the other methods under investigation in terms of achieving the best trade-off for the reconstruction of the whole brain and PET-unique regions, assessed in terms of the SSIM, NRMSE, and bias vs standard deviation.

Conclusion: For the reconstruction of noisy data, multiple MR-informed methods produce favorable whole brain vs PET-unique region trade-off in terms of the image quality metrics of SSIM and NRMSE, comfortably outperforming the whole image denoising of postsmoothed MLEM.

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