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首页> 外文期刊>Journal of nuclear medicine technology >Effect of varying number of OSEM subsets on PET lesion detectability
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Effect of varying number of OSEM subsets on PET lesion detectability

机译:不同数量的OSEM子集对PET病变可检测性的影响

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Iterative reconstruction has become the standard for routine clinical PET imaging. However, iterative reconstruction is computationally expensive, especially for time-of-flight (TOF) data. Block-iterative algorithms such as ordered-subsets expectation maximization (OSEM) are commonly used to accelerate the reconstruction. There is a tradeoff between the number of subsets and reconstructed image quality. The objective of this work was to evaluate the effect of varying the number of OSEM subsets on lesion detection for general oncologic PET imaging. Methods: Experimental phantom data were taken from the Utah PET Lesion Detection Database, modeling whole-body oncologic 18F-FDG PET imaging of a 92-kg patient. The experiment consisted of 24 scans over 4 d on a TOF PET/CT scanner, with up to 23 lesions (diameter, 6-16 mm) distributed throughout the thorax, abdomen, and pelvis. Images were reconstructed with maximum-likelihood expectation maximization (MLEM) and with OSEM using 2-84 subsets. The reconstructions were repeated both with and without TOF. Localization receiver-operating-characteristic (LROC) analysis was applied using the channelized nonprewhitened observer. The observer was first used to optimize the number of iterations and smoothing filter for each case that maximized lesion-detection performance for these data; this was done to ensure that fair comparisons were made with each test case operating near its optimal performance. The probability of correct localization and the area under the LROC curve were then analyzed as functions of the number of subsets to characterize the effect of OSEM on lesion-detection performance. Results: Compared with the baseline MLEM algorithm, lesion-detection performance with OSEM declined as the number of subsets increased. The decline was moderate out to about 12-14 subsets and then became progressively steeper as the number of subsets increased. Comparing TOF with non-TOF results, the magnitude of the performance drop was larger for TOF reconstructions. Conclusion: PET lesion-detection performance is degraded when OSEM is used with a large number of subsets. This loss of image quality can be controlled using a moderate number of subsets (e.g., 12-14 or fewer), retaining a large degree of acceleration while maintaining high image quality. The use of more aggressive subsetting can result in image quality degradations that offset the benefits of using TOF or longer scan times.
机译:迭代重建已成为常规临床PET成像的标准。但是,迭代重建的计算量很大,尤其是对于飞行时间(TOF)数据而言。块迭代算法(例如有序子集期望最大化(OSEM))通常用于加速重建。在子集数量和重建的图像质量之间需要权衡。这项工作的目的是评估普通肿瘤PET成像中改变OSEM子集数量对病变检测的影响。方法:从犹他州PET病变检测数据库中获取实验体模数据,对92千克患者的全身肿瘤18F-FDG PET成像进行建模。该实验包括在TOF PET / CT扫描仪上进行的4 d内的24次扫描,在整个胸部,腹部和骨盆中分布多达23个病变(直径6-16 mm)。使用2-84子集,使用最大似然期望最大化(MLEM)和OSEM重建图像。无论有无TOF,均重复进行重建。本地化接收器工作特性(LROC)分析使用通道化的非预增白观测器进行。首先,使用观察者来优化每种情况下的迭代次数和平滑滤波器,以使这些数据的病变检测性能最大化。这样做是为了确保对每个测试用例在接近其最佳性能的情况下进行公平的比较。然后分析正确定位的可能性和LROC曲线下的面积作为子集数量的函数,以表征OSEM对病变检测性能的影响。结果:与基线MLEM算法相比,OSEM的病变检测性能随子集数量的增加而下降。下降幅度适中,约为12-14个子集,然后随着子集数量的增加而逐渐变陡。将TOF与非TOF结果进行比较,对于TOF重构,性能下降的幅度更大。结论:当将OSEM与大量子集一起使用时,PET病变检测性能会下降。可以使用中等数量的子集(例如12-14个或更少)来控制这种图像质量的损失,在保持高图像质量的同时保持很大的加速度。使用更激进的子集可能会导致图像质量下降,从而抵消使用TOF或更长扫描时间的好处。

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