基于透射和发射的TOF-PET/MRI衰减校正比较

P. Mollet, S. Vandenberghe
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引用次数: 3

摘要

PET定量需要对组织中511 keV光子的衰减进行精确校正。在PET/CT成像中,衰减图是由CT图像导出的。与CT相反,从MRI强度值到衰减系数的直接对话并不适用。因此,衰减校正仍然是PET-MR扫描仪发展的主要挑战之一。许多研究表明,基于核磁共振的衰减校正在临床实践中是可行的。然而,仍然存在一些缺点。或者,已经提出了从发射数据或通过在PET扫描仪的视场内使用外部传输源推导衰减图的方法。在这项工作中,基于传输和/或排放数据的三种方法进行了评估,并与使用GATE的模拟研究进行了比较。在第一种方法中,在PET扫描仪的视场内插入环形传输源。采用迭代MLTR-MLEM算法依次重建衰减图像和PET图像。第二种方法仅利用发射数据,利用MLAA算法同时重构衰减系数和PET图像。最后,提出了一种利用发射和透射数据同时确定衰减图和PET图像的MLAA+方法。结果表明,在基于发射的方法中必须使用TOF信息,并且通过包含来自外部源的额外传输数据可以显著改进算法,特别是在活动分布不完全支持衰减介质的情况下。此外,传输数据的存在允许补偿重建衰减系数和PET图像之间的低频串扰。仅使用发射数据时,肺、软组织和脊柱的重建衰减系数的绝对误差分别高出40%、15%和9%以上。相反,在使用TOF信息从发射数据中提取传输数据的MLTR方法中,与基于发射的方法相比,错误分类导致重建的衰减图不准确,重建的PET图像中组织间方差更高。当同时重建衰减图和活度分布时,这些影响也会减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of transmission- and emission-based attenuation correction for TOF-PET/MRI
PET quantification requires accurate correction for the attenuation of 511 keV photons in tissue. In PET/CT imaging, the attenuation map is derived from a CT image. Contrary to CT, a direct conversation from MRI intensity values to attenuation coefficients is not applicable. Hence, attenuation correction remains one of the major challenges in the development of PET-MR scanners. Many studies have shown the feasibility of MR-based attenuation correction in clinical practice. However, some drawbacks remain. Alternatively, methods have been suggested to derive the attenuation map from the emission data or by using an external transmission source inside the FOV of the PET scanner. In this work three approaches based on transmission and/or emission data were evaluated and compared with a simulation study using GATE. In the first approach an annulus shaped transmission source was inserted inside the FOV of the PET scanner. An iterative MLTR-MLEM algorithm was used to reconstruct the attenuation and the PET image sequentially. In the second approach only the emission data is used and the attenuation coefficients and the PET image are reconstructed simultaneously with the MLAA algorithm. Finally, an MLAA+ method is proposed in which both the emission and transmission data are used for determining the attenuation map and the PET image simultaneously. Results show that the use of TOF information in the emission-based approach is mandatory and the algorithm can be improved significantly by including additional transmission data coming from an external source, especially in cases where the attenuation medium is not fully supported by the activity distribution. Additionally, the presence of the transmission data allows compensation for the low-frequency cross-talk between the reconstructed attenuation coefficients and the PET image. The absolute error of reconstructed attenuation coefficients in the lungs, soft tissue and spine was respectively more then 40%, 15% and 9% higher when only emission data was used. Contrary, in the MLTR approach, where the transmission-data is extracted from the emission data using TOF information, misclassifications cause inaccuracies in the reconstructed attenuation maps and higher inter-tissue variance in the reconstructed PET image compared to emission based methods. These effects are also reduced when the attenuation map and activity distribution are reconstructed simultaneously.
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