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Quantification task-optimized estimates from OSEM and FBP reconstructions in single- and multi-subject studies

机译:量化任务优化的OSEM和FBP重建在单亲和多学科研究中的重建

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Task-based selection of image reconstruction methodology in emission tomography is a critically important step when designing a PET protocol. This work concerns optimizing performance for a range of quantification tasks: finding the radioactivity concentration for different sizes of region of interest (ROI) and different group sizes. It is shown that there is a tremendous impact of ROI and group size on the quantitative performance of different algorithms which should be considered when selecting reconstruction parameters. Therefore, a study-specific and space-variant selection rule is proposed that selects a close to optimal estimate from a series of parameter estimates obtained by filtered backprojection (FBP) and different OSEM reconstructions. The optimality criterion is to minimize the approximative mean squared error (MSE), which is estimated from the limited data at hand (single- or multi-subject) using the bootstrap resampling technique. The proposed approach is appropriate for single voxel estimates and ROI estimates in single-and multi-subject studies. An extensive multi-try simulation study using a 2D numerical phantom and relevant count levels shows that the proposed selection rule can produce quantitative estimates that are close to the estimates that minimise the true MSE (that can only normally be obtained from many independent Monte-Carlo realisations with knowledge of the ground truth). This indicates that with the selection rule a truly task-based quantitative parameter estimation is possible not only avoiding the critical step of specifying reconstruction parameters such as OSEM iteration number or the choice between FBP and OSEM, but also providing a close to optimal estimate of the parameter.
机译:在设计PET协议时,排放断层扫描中的基于任务的图像重建方法的选择是一个批判性重要的一步。这项工作涉及优化一系列量化任务的性能:找到针对不同尺寸的兴趣区域(ROI)和不同组大小的放射性浓度。结果表明,ROI和群体大小对不同算法的定量性能产生了巨大影响,在选择重建参数时应考虑的不同算法。因此,提出了一种学习特定的和空间变体选择规则,其从通过滤波反射(FBP)和不同的OSEM重建获得的一系列参数估计来选择接近最佳估计。最优标准是最小化近似均方误差(MSE),其使用自举重采样技术从手头(单个或多对象)的有限数据估计。所提出的方法适用于单一和多项对象研究中的单体素估计和ROI估计。使用2D数值幻像和相关计数级别的广泛的多尝试仿真研究表明,所提出的选择规则可以产生接近最小化真实MSE的估计的定量估计(这只能从许多独立的Monte-Carlo获得了解实际真相的实现)。这表明,通过选择规则,不仅可以避免指定重建参数,例如OSEM迭代号或FBP和OSEM之间的选择的关键步骤,而且还可以提供接近的最佳估计的基于任务的定量参数估计。范围。

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