基于3D模型的部分环正电子发射断层扫描归一化因子的最大似然估计验证

T. Niknejad, S. Tavernier, J. Varela, K. Thielemans
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引用次数: 5

摘要

下一代器官特异性正电子发射断层扫描(PET)扫描仪,例如用于乳房成像,将使用部分环形几何形状。我们提出了一种基于组件的归一化因子的最大似然(ML)估计,适用于部分环几何形状的3D PET数据重建。该方法基于全环PET的层析图像重建软件(STIR),并在固定式部分环扫描仪上进行了验证。该模型包括晶体效率和几何因素的估计。利用最大似然估计方法(MLEM)在STIR中进行三维重建,并使用Geant4应用程序对全环和部分环扫描仪的层析发射(GATE)模拟数据以及部分环几何演示器的实验数据进行了验证。评估了模拟圆柱和NEMA-IQ模型在扫描仪几何形状下的重建图像的均匀性,以及部分环形演示器中线源图像的均匀性。结果表明,应用估计的归一化因子后,在轴向和跨轴方向上都得到了均匀的图像。通过仿真比较全环系统和部分环系统的归一化系数,验证了算法的准确性。我们已经表明,估计的归一化因子几乎是相同的,即使单独的成分不是。这证明了三维归一化因子的ML估计是有效的,可以应用于部分环形扫描仪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation of 3D model-based maximum-likelihood estimation of normalisation factors for partial ring positron emission tomography
The next generation of organ specific Positron Emission Tomography (PET) scanners, e.g. for breast imaging, will use partial ring geometries. We propose a component-based Maximum-Likelihood (ML) estimation of normalisation factors for 3D PET data reconstruction applicable to partial ring geometries. This method is based on the Software for Tomographic Image Reconstruction (STIR) for full ring PET and is validated for a stationary partial ring scanner. The model includes the estimation for crystal efficiencies and geometric factors. The algorithm is validated using Maximum Likelihood Estimation Method (MLEM) based 3D reconstruction in STIR using Geant4 Application for Tomographic Emission (GATE) simulation data for full and partial ring scanners and experimental data from a demonstrator with partial ring geometry. The uniformity of the reconstructed images of simulated cylindrical and NEMA-IQ phantoms in both scanner geometries and the image of a line source in the partial ring demonstrator is assessed. The results have shown that uniform images in both axial and transaxial directions are obtained after applying the estimated normalisation factors. The accuracy of the algorithm is validated by comparing the normalisation factors between the full and partial ring systems in simulation. We have shown that the estimated normalisation factors are almost identical, even though the separate components are not. This proves that the ML estimation of the 3D normalisation factors is valid and can be applied to the partial ring scanner.
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