Siemens Medical Solutions USA, Inc, Knoxville, TN, USA.
Department of Radiology, Carilion Clinic, Roanoke, VA, USA.
Med Phys. 2021 Aug;48(8):4218-4228. doi: 10.1002/mp.14988. Epub 2021 Jun 28.
We aim to quantify differences between a new maximum likelihood (ML) background scaling (MLBS) algorithm and two conventional scatter scaling methods for clinical PET/CT. A common source of reduced image quantification with conventional scatter corrections is attributed to erroneous scaling of the initial scatter estimate to match acquired scattered events in the sinogram. MLBS may have performance advantages over conventional methods by using all available data intersecting the subject.
A retrospective analysis was performed on subjects injected with F-FDG (N = 71) and Ga-DOTATATE (N = 11) and imaged using time-of-flight (TOF) PET/CT. The scatter distribution was estimated with single scatter simulation approaches. Conventional scaling algorithms included (a) tail fitted background scaling (TFBS), which scales the scatter to "tails" outside the emission support, and (b) absolute scatter correction (ABS), which utilizes the simulated scatter distribution with no scaling applied. MLBS consisted of an alternating iterative reconstruction with a TOF-based ML activity image update allowing negative values (NEG-ML) and nested loop ML scatter scaling estimation. Scatter corrections were compared using reconstructed images as follows: (a) normalized relative difference images were generated and used for voxel-wise analysis, (b) liver and suspected lesion ROIs were drawn to compute mean SUVs, and (c) a qualitative analysis of overall diagnostic image quality, impact of artifacts, and lesion conspicuity was performed. Absolute quantification and normalized relative differences were also assessed with an F-FDG phantom study.
For human subjects F-FDG data, Bland-Altman plots demonstrated that the largest normalized voxel-wise differences were observed close to the lower limit (SUV = 1.0). MLBS reconstructions trended towards higher scatter fractions compared to TFBS and ABS images, with median voxel differences across all subjects for TFBS-MLBS measured at 1.7% and 7.6% for F-FDG and Ga-DOTATATE, respectively. For mean SUV analysis, there was a high degree of correlation between the scatter corrections. For F-FDG, ABS scatter correction reconstructions trended towards higher liver mean SUVs relative to MLBS. The qualitative image analysis revealed no significant differences between TFBS and MLBS image reconstructions. For a uniformly filled relatively large 37 cm diameter phantom, MLBS produced the lowest bias in absolute quantification, while normalized voxel-wise differences showed a trend in scatter correction performance consistent with the human subjects study.
For F-FDG, MLBS is at least a valid substitute to TFBS, providing reconstructed image performance comparable to TFBS in most subjects but exhibiting quantitative differences in cases where TFBS is typically prone to inaccuracies (e.g., due to patient motion and CT-based attenuation map truncation). Particularly for low contrast regions, quantification differs for ABS compared to MLBS and TFBS, and caution should be taken when utilizing ABS for decision-making based on quantitative metrics.
我们旨在量化新的最大似然(ML)背景缩放(MLBS)算法与两种用于临床 PET/CT 的常规散射缩放方法之间的差异。常规散射校正中图像量化降低的一个常见原因是初始散射估计值错误地缩放以匹配在射线中获取的散射事件。MLBS 可以通过使用与主体相交的所有可用数据来获得优于常规方法的性能优势。
对注射了 F-FDG(N=71)和 Ga-DOTATATE(N=11)并使用飞行时间(TOF)PET/CT 成像的受试者进行了回顾性分析。使用单散射模拟方法估计散射分布。常规缩放算法包括(a)尾部拟合背景缩放(TFBS),它将散射缩放为发射支持之外的“尾部”,以及(b)绝对散射校正(ABS),它利用没有应用缩放的模拟散射分布。MLBS 由带有 TOF 基于 ML 活动图像更新的交替迭代重建组成,允许负值(NEG-ML)和嵌套循环 ML 散射缩放估计。使用以下重建图像比较散射校正:(a)生成归一化相对差异图像,并用于体素分析,(b)绘制肝脏和可疑病变 ROI 以计算平均 SUV,以及(c)进行整体诊断图像质量、伪影影响和病变可见度的定性分析。还使用 F-FDG 体模研究评估了绝对定量和归一化相对差异。
对于人类 F-FDG 数据,Bland-Altman 图表明,靠近下限(SUV=1.0)的最大体素差异是观察到的。与 TFBS 和 ABS 图像相比,MLBS 重建的散射分数趋势更高,对于所有受试者,TFBS-MLBS 的体素差异中位数分别为 1.7%和 7.6%,用于 F-FDG 和 Ga-DOTATATE。对于平均 SUV 分析,散射校正之间具有高度相关性。对于 F-FDG,与 MLBS 相比,ABS 散射校正重建的肝脏平均 SUV 趋势更高。定性图像分析显示 TFBS 和 MLBS 图像重建之间没有显着差异。对于均匀填充的相对较大的 37cm 直径体模,MLBS 在绝对定量方面产生的偏差最小,而体素差异的归一化表明散射校正性能的趋势与人体研究一致。
对于 F-FDG,MLBS 至少是 TFBS 的有效替代品,在大多数受试者中提供与 TFBS 相当的重建图像性能,但在 TFBS 通常容易出现不准确的情况下(例如,由于患者运动和 CT 基于衰减图截断),则表现出定量差异。特别是对于低对比度区域,与 ABS 相比,MLBS 和 TFBS 的定量存在差异,并且在基于定量指标进行决策时应谨慎使用 ABS。