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点扩展函数建模对集成 PET/MR 混合成像中 PET 图像质量的影响。

Impact of Point-Spread Function Modeling on PET Image Quality in Integrated PET/MR Hybrid Imaging.

机构信息

Institute of Medical Physics, Friedrich-Alexander-University of Erlangen-Nürnberg, Erlangen, Germany

High Field and Hybrid MR Imaging, University Hospital Essen, Essen, Germany.

出版信息

J Nucl Med. 2016 Jan;57(1):78-84. doi: 10.2967/jnumed.115.154757. Epub 2015 Oct 15.

Abstract

UNLABELLED

The aim of this study was to systematically assess the quantitative and qualitative impact of including point-spread function (PSF) modeling into the process of iterative PET image reconstruction in integrated PET/MR imaging.

METHODS

All measurements were performed on an integrated whole-body PET/MR system. Three substudies were performed: an (18)F-filled Jaszczak phantom was measured, and the impact of including PSF modeling in ordinary Poisson ordered-subset expectation maximization reconstruction on quantitative accuracy and image noise was evaluated for a range of radial phantom positions, iteration numbers, and postreconstruction smoothing settings; 5 representative datasets from a patient population (total n = 20, all oncologic (18)F-FDG PET/MR) were selected, and the impact of PSF on lesion activity concentration and image noise for various iteration numbers and postsmoothing settings was evaluated; and for all 20 patients, the influence of PSF modeling was investigated on visual image quality and number of detected lesions, both assessed by clinical experts. Additionally, the influence on objective metrics such as changes in SUVmean, SUVpeak, SUVmax, and lesion volume was assessed using the manufacturer-recommended reconstruction settings.

RESULTS

In the phantom study, PSF modeling significantly improved activity recovery and reduced the image noise at all radial positions. This effect was measurable only at a high number of iterations (>10 iterations, 21 subsets). In the patient study, again, PSF increased the detected activity in the patient's lesions at concurrently reduced image noise. Contrary to the phantom results, the effect was notable already at a lower number of iterations (>1 iteration, 21 subsets). Lastly, for all 20 patients, when PSF and no-PSF reconstructions were compared, an identical number of congruent lesions was found. The overall image quality of the PSF reconstructions was rated better when compared with no-PSF data. The SUVs of the detected lesions with PSF were substantially increased in the range of 6%-75%, 5%-131%, and 5%-148% for SUVmean, SUVpeak, and SUVmax, respectively. A regression analysis showed that the relative increase in SUVmean/peak/max decreases with increasing lesion size, whereas it increases with the distance from the center of the PET field of view.

CONCLUSION

In whole-body PET/MR hybrid imaging, PSF-based PET reconstructions can improve activity recovery and image noise, especially at lateral positions of the PET field of view. This has been demonstrated quantitatively in phantom experiments as well as in patient imaging, for which additionally an improvement of image quality could be observed.

摘要

未加标签

本研究的目的是系统评估在集成 PET/MR 成像中迭代 PET 图像重建过程中纳入点扩散函数 (PSF) 建模对定量和定性的影响。

方法

所有测量均在集成的全身 PET/MR 系统上进行。进行了三项子研究:用(18)F 填充的 Jaszczak 体模进行了测量,并评估了在一系列径向体模位置、迭代次数和重建后平滑设置下,包括 PSF 建模在内的普通泊松有序子集期望最大化重建对定量准确性和图像噪声的影响;从患者群体中选择了 5 个具有代表性的数据集(共 20 名,均为肿瘤(18)F-FDG PET/MR),评估了 PSF 对不同迭代次数和后平滑设置下病灶活性浓度和图像噪声的影响;对于所有 20 名患者,通过临床专家评估,研究了 PSF 建模对视觉图像质量和检测到的病灶数量的影响。此外,还使用制造商推荐的重建设置评估了 PSF 建模对 SUVmean、SUVpeak、SUVmax 和病灶体积等客观指标的影响。

结果

在体模研究中,PSF 建模显著提高了所有径向位置的活性恢复并降低了图像噪声。仅在高迭代次数(>10 次迭代,21 个子集)下才能观察到这种效果。在患者研究中,PSF 再次增加了患者病灶的检测活性,同时降低了图像噪声。与体模结果相反,在较低的迭代次数(>1 次迭代,21 个子集)下就已经可以观察到这种效果。最后,对于所有 20 名患者,当比较 PSF 和非 PSF 重建时,发现相同数量的一致病灶。与非 PSF 数据相比,PSF 重建的整体图像质量得到了更好的评价。在 SUVmean、SUVpeak 和 SUVmax 方面,PSF 重建检测到的病灶 SUV 分别增加了 6%-75%、5%-131%和 5%-148%。回归分析表明,SUVmean/peak/max 的相对增加量随病灶大小的增加而减小,而随 PET 视野中心的距离增加而增加。

结论

在全身 PET/MR 混合成像中,基于 PSF 的 PET 重建可以提高活性恢复和图像噪声,特别是在 PET 视野的外侧位置。这在体模实验和患者成像中都得到了定量证明,并且还可以观察到图像质量的提高。

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