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混合式脑PET/MR成像中基于斑点的飞行时间PET图像重建的定性和定量评估

Qualitative and Quantitative Evaluation of Blob-Based Time-of-Flight PET Image Reconstruction in Hybrid Brain PET/MR Imaging.

作者信息

Leemans Eva L, Kotasidis Fotis, Wissmeyer Michael, Garibotto Valentina, Zaidi Habib

机构信息

Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, 1211, Geneva 4, Switzerland.

Technical Medicine, University of Twente, 7522 NB, Enschede, The Netherlands.

出版信息

Mol Imaging Biol. 2015 Oct;17(5):704-13. doi: 10.1007/s11307-015-0824-x.

DOI:10.1007/s11307-015-0824-x
PMID:25634260
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4768229/
Abstract

PURPOSE

Many neurological diseases affect small structures in the brain and, as such, reliable visual evaluation and accurate quantification are required. Recent technological developments made the clinical use of hybrid positron emission tomography/magnetic resonance (PET/MR) systems possible, providing both functional and anatomical information in a single imaging session. Nevertheless, there is a trade-off between spatial resolution and image quality (contrast and noise), which is dictated mainly by the chosen acquisition and reconstruction protocols. Image reconstruction algorithms using spherical symmetric basis functions (blobs) for image representation have a number of additional parameters that impact both the qualitative and quantitative image characteristics. Hence, a detailed investigation of the blob-based reconstruction characteristics using different parameters is needed to achieve optimal reconstruction results.

PROCEDURES

This work evaluated the impact of a range of blob parameters on image quality and quantitative accuracy of brain PET images acquired on the Ingenuity Time-of-Flight (TOF) PET/MR system. Two different phantoms were used to simulate brain imaging applications. Image contrast and noise characteristics were assessed using an image quality phantom. Quantitative performance in a clinical setting was investigated using the Hoffman 3D brain phantom at various count levels. Furthermore, the visual quality of four clinical studies was scored blindly by two experienced physicians to qualitatively evaluate the influence of different reconstruction protocols, hereby providing indications on parameters producing the best image quality.

RESULTS

Quantitative evaluation using the image quality phantom showed that larger basis function radii result in lower contrast recovery (∼2%) and lower variance levels (∼15%). The brain phantom and clinical studies confirmed these observations since lower contrast was seen between anatomical structures. High and low count statistics gave comparable values. The qualitative evaluation of the clinical studies, based on the assessment performed by the physicians, showed a preference towards lower image variance levels with a slightly lower contrast, favoring higher radii and four iterations.

CONCLUSION

This study systematically evaluated a number of basis function parameters and their quantitative and qualitative effect within PET image reconstruction in the context of brain imaging. A range of blob parameters can minimize error and provided optimal image quality, where the anatomical structures could be recognized but the exact delineation of these structures is simplified in scans with lower image variance levels and thus, higher radii should be preferred. With the optimization of blob parameters, the reconstructed images were found to be qualitatively improved (optimum parameters {d = 2.0375, alpha = 10.4101, radius = 3.9451}) as assessed by the physicians compared to the current clinical protocol. However, this qualitative improvement is task specific, depending on the desired image characteristics to be extracted. Finally, this work could be used as a guide for application-specific optimal parameter selection.

摘要

目的

许多神经系统疾病会影响大脑中的微小结构,因此需要可靠的视觉评估和准确的定量分析。最近的技术发展使混合正电子发射断层扫描/磁共振(PET/MR)系统在临床上的应用成为可能,能够在一次成像过程中提供功能和解剖信息。然而,空间分辨率与图像质量(对比度和噪声)之间存在权衡,这主要由所选的采集和重建协议决定。使用球对称基函数(斑点)进行图像表示的图像重建算法有许多额外参数,这些参数会影响图像的定性和定量特征。因此,需要详细研究使用不同参数的基于斑点的重建特征,以获得最佳重建结果。

程序

本研究评估了一系列斑点参数对在Ingenuity飞行时间(TOF)PET/MR系统上采集的脑PET图像的图像质量和定量准确性的影响。使用两种不同的体模来模拟脑成像应用。使用图像质量体模评估图像对比度和噪声特征。在不同计数水平下,使用霍夫曼3D脑体模研究临床环境中的定量性能。此外,两名经验丰富的医生对四项临床研究的视觉质量进行了盲法评分,以定性评估不同重建协议的影响,从而为产生最佳图像质量的参数提供指示。

结果

使用图像质量体模进行的定量评估表明,较大的基函数半径会导致较低的对比度恢复(约2%)和较低的方差水平(约15%)。脑体模和临床研究证实了这些观察结果,因为在解剖结构之间观察到较低的对比度。高计数统计和低计数统计给出了可比的值。基于医生评估的临床研究定性评估显示,倾向于较低的图像方差水平和略低的对比度,倾向于较大的半径和四次迭代。

结论

本研究系统地评估了一系列基函数参数及其在脑成像背景下PET图像重建中的定量和定性影响。一系列斑点参数可以最小化误差并提供最佳图像质量,在这种情况下,可以识别解剖结构,但在图像方差水平较低的扫描中,这些结构的精确描绘会简化,因此应首选较大的半径。通过优化斑点参数,与当前临床协议相比,经医生评估发现重建图像在定性上得到了改善(最佳参数{d = 2.0375,alpha = 10.4101,半径 = 3.9451})。然而,这种定性改善是特定于任务的,取决于要提取的所需图像特征。最后,这项工作可作为特定应用最佳参数选择的指南。

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