Mortazi Aliasghar, Udupa Jayaram K, Odhner Dewey, Tong Yubing, Torigian Drew A
Medical Image Processing Group, Department of Radiology, University of Pennsylvania, Philadelphia, PA, United States.
Front Nucl Med. 2023;3. doi: 10.3389/fnume.2023.1210931. Epub 2023 Sep 11.
Tissue radiotracer activity measured from positron emission tomography (PET) images is an important biomarker that is clinically utilized for diagnosis, staging, prognostication, and treatment response assessment in patients with cancer and other clinical disorders. Using PET image values to define a normal range of metabolic activity for quantification purposes is challenging due to variations in patient-related factors and technical factors. Although the formulation of standardized uptake value (SUV) has compensated for some of these variabilities, significant non-standardness still persists. We propose an image processing method to substantially mitigate these variabilities.
The standardization method is similar for activity concentration (AC) PET and SUV PET images with some differences and consists of two steps. The is performed only once for each of AC PET or SUV PET, employs a set of images of normal subjects, and requires a reference object, while the is executed for each patient image to be standardized. In the calibration step, a standardized scale is determined along with 3 key image intensity landmarks defined on it including the minimum percentile intensity , median intensity , and high percentile intensity and are estimated based on image intensities within the body region in the normal calibration image set. The optimal value of the maximum percentile corresponding to the intensity is estimated via an optimization process by using the reference object to optimally separate the highly variable high uptake values from the normal uptake intensities. In the , the first two landmarks-the minimum percentile intensity , and the median intensity -are found for the given image for the body region, and the high percentile intensity is determined corresponding to the optimally estimated high percentile value . Subsequently, intensities of are mapped to the standard scale piecewise linearly for different segments. We employ three strategies for evaluation and comparison with other standardization methods: (i) comparing coefficient of variation of mean intensity within test objects across different normal test subjects before and after standardization; (ii) comparing mean absolute difference ( ) of mean intensity within test objects across different subjects in repeat scans before and after standardization; (iii) comparing of mean intensity across different normal subjects before and after standardization where the scans came from different brands of scanners.
Our data set consisted of 84 FDG-PET/CT scans of the body torso including 38 normal subjects and two repeat-scans of 23 patients. We utilized one of two objects-liver and spleen-as a reference object and the other for testing. The proposed standardization method reduced and by a factor of 3-8 in comparison to other standardization methods and no standardization. Upon standardization by our method, the image intensities (both for AC and SUV) from two different brands of scanners become statistically indistinguishable, while without standardization, they differ significantly and by a factor of 3-9.
The proposed method is automatic, outperforms current standardization methods, and effectively overcomes the residual variation left over in SUV and inter-scanner variations.
从正电子发射断层扫描(PET)图像测量的组织放射性示踪剂活性是一种重要的生物标志物,临床上用于癌症和其他临床疾病患者的诊断、分期、预后评估及治疗反应评估。由于患者相关因素和技术因素的差异,利用PET图像值来定义用于定量目的的代谢活性正常范围具有挑战性。尽管标准化摄取值(SUV)的制定弥补了其中一些变异性,但显著的非标准化现象仍然存在。我们提出一种图像处理方法来大幅减轻这些变异性。
活性浓度(AC)PET图像和SUV PET图像的标准化方法相似但存在一些差异,包括两个步骤。校准步骤仅针对AC PET或SUV PET各自执行一次,使用一组正常受试者的图像,并且需要一个参考对象,而标准化步骤则针对每个要标准化的患者图像执行。在校准步骤中,确定一个标准化尺度以及在其上定义的3个关键图像强度界标,包括最小百分位数强度、中位数强度和高百分位数强度,和基于正常校准图像集中身体区域内的图像强度进行估计。通过使用参考对象进行优化过程来估计与强度对应的最大百分位数的最佳值,以将高度可变的高摄取值与正常摄取强度最佳地分离。在标准化步骤中,为给定的身体区域图像找到前两个界标——最小百分位数强度和中位数强度,并根据最佳估计的高百分位数确定高百分位数强度。随后,对于不同段,将的强度分段线性映射到标准尺度。我们采用三种策略进行评估并与其他标准化方法进行比较:(i)比较标准化前后不同正常测试对象的测试对象内平均强度的变异系数;(ii)比较标准化前后重复扫描中不同对象的测试对象内平均强度的平均绝对差();(iii)比较来自不同品牌扫描仪的扫描在标准化前后不同正常受试者的平均强度的。
我们的数据集包括84例身体躯干的FDG-PET/CT扫描,其中包括38例正常受试者以及23例患者的两次重复扫描。我们将肝脏和脾脏这两个对象之一用作参考对象,另一个用于测试。与其他标准化方法和未标准化相比,所提出的标准化方法将和降低了3至8倍。通过我们的方法进行标准化后,来自两个不同品牌扫描仪的图像强度(AC和SUV)在统计学上变得无法区分,而未标准化时,它们差异显著,相差3至9倍。
所提出的方法是自动的,优于当前的标准化方法,并有效地克服了SUV中残留的变异性和扫描仪间的变异性。