School of Biomedical Engineering and Imaging Sciences, King's College London, King's Health Partners, St Thomas' Hospital, London, SE1 7EH, UK.
Med Phys. 2018 Jul;45(7):3001-3018. doi: 10.1002/mp.12937. Epub 2018 May 23.
Many clinical contexts require the acquisition of multiple positron emission tomography (PET) scans of a single subject, for example, to observe and quantitate changes in functional behaviour in tumors after treatment in oncology. Typically, the datasets from each of these scans are reconstructed individually, without exploiting the similarities between them. We have recently shown that sharing information between longitudinal PET datasets by penalizing voxel-wise differences during image reconstruction can improve reconstructed images by reducing background noise and increasing the contrast-to-noise ratio of high-activity lesions. Here, we present two additional novel longitudinal difference-image priors and evaluate their performance using two-dimesional (2D) simulation studies and a three-dimensional (3D) real dataset case study.
We have previously proposed a simultaneous difference-image-based penalized maximum likelihood (PML) longitudinal image reconstruction method that encourages sparse difference images (DS-PML), and in this work we propose two further novel prior terms. The priors are designed to encourage longitudinal images with corresponding differences which have (a) low entropy (DE-PML), and (b) high sparsity in their spatial gradients (DTV-PML). These two new priors and the originally proposed longitudinal prior were applied to 2D-simulated treatment response [ F]fluorodeoxyglucose (FDG) brain tumor datasets and compared to standard maximum likelihood expectation-maximization (MLEM) reconstructions. These 2D simulation studies explored the effects of penalty strengths, tumor behaviour, and interscan coupling on reconstructed images. Finally, a real two-scan longitudinal data series acquired from a head and neck cancer patient was reconstructed with the proposed methods and the results compared to standard reconstruction methods.
Using any of the three priors with an appropriate penalty strength produced images with noise levels equivalent to those seen when using standard reconstructions with increased counts levels. In tumor regions, each method produces subtly different results in terms of preservation of tumor quantitation and reconstruction root mean-squared error (RMSE). In particular, in the two-scan simulations, the DE-PML method produced tumor means in close agreement with MLEM reconstructions, while the DTV-PML method produced the lowest errors due to noise reduction within the tumor. Across a range of tumor responses and different numbers of scans, similar results were observed, with DTV-PML producing the lowest errors of the three priors and DE-PML producing the lowest bias. Similar improvements were observed in the reconstructions of the real longitudinal datasets, although imperfect alignment of the two PET images resulted in additional changes in the difference image that affected the performance of the proposed methods.
Reconstruction of longitudinal datasets by penalizing difference images between pairs of scans from a data series allows for noise reduction in all reconstructed images. An appropriate choice of penalty term and penalty strength allows for this noise reduction to be achieved while maintaining reconstruction performance in regions of change, either in terms of quantitation of mean intensity via DE-PML, or in terms of tumor RMSE via DTV-PML. Overall, improving the image quality of longitudinal datasets via simultaneous reconstruction has the potential to improve upon currently used methods, allow dose reduction, or reduce scan time while maintaining image quality at current levels.
许多临床情况下需要获取单个受试者的多次正电子发射断层扫描 (PET) 扫描,例如,在肿瘤学中观察和定量治疗后肿瘤的功能行为变化。通常,这些扫描中的每一个数据集都单独重建,而没有利用它们之间的相似性。我们最近表明,通过在图像重建期间惩罚体素之间的差异,可以在纵向 PET 数据集之间共享信息,从而通过降低背景噪声和提高高活性病变的对比度噪声比来改善重建图像。在这里,我们提出了另外两个新的纵向差分图像先验,并使用二维 (2D) 模拟研究和三维 (3D) 真实数据集案例研究来评估它们的性能。
我们之前提出了一种基于同时差分图像的惩罚最大似然 (PML) 纵向图像重建方法,该方法鼓励稀疏差分图像 (DS-PML),在这项工作中,我们提出了另外两个新的先验项。这些先验项旨在鼓励具有相应差异的纵向图像,这些差异具有 (a) 低熵 (DE-PML),和 (b) 空间梯度的高稀疏性 (DTV-PML)。这两个新的先验项和最初提出的纵向先验项应用于二维模拟治疗反应[ F]氟脱氧葡萄糖 (FDG) 脑肿瘤数据集,并与标准最大似然期望最大化 (MLEM) 重建进行比较。这些二维模拟研究探索了惩罚强度、肿瘤行为和扫描间耦合对重建图像的影响。最后,对来自头颈部癌症患者的两个扫描纵向数据系列进行了重建,使用了所提出的方法,并将结果与标准重建方法进行了比较。
使用三个先验项中的任何一个,并使用适当的惩罚强度,都可以产生与使用增加计数水平的标准重建相同噪声水平的图像。在肿瘤区域,每种方法在肿瘤定量和重建均方根误差 (RMSE) 的保留方面产生了略有不同的结果。特别是,在两扫描模拟中,DE-PML 方法产生的肿瘤平均值与 MLEM 重建非常吻合,而 DTV-PML 方法由于肿瘤内噪声的降低,产生了最低的误差。在一系列肿瘤反应和不同的扫描次数中,观察到了类似的结果,DTV-PML 产生的误差最低,DE-PML 产生的偏差最低。在真实的纵向数据集的重建中也观察到了类似的改进,尽管两个 PET 图像的对准不完美,导致差分图像中出现了额外的变化,从而影响了所提出方法的性能。
通过对来自数据系列的一对扫描之间的差分图像进行惩罚,对纵向数据集进行重建,可以降低所有重建图像的噪声。选择适当的惩罚项和惩罚强度,可以在保持变化区域的重建性能的同时,通过 DE-PML 实现平均强度的定量,或通过 DTV-PML 实现肿瘤 RMSE,从而实现这种噪声降低。总的来说,通过同时重建来提高纵向数据集的图像质量有可能改善目前使用的方法,允许减少剂量,或减少扫描时间,同时保持目前的图像质量水平。