Mehranian Abolfazl, Reader Andrew J
School of Biomedical Engineering and Imaging Sciences, Department of Biomedical Engineering, King's College London, London SE1 7EH, U.K.
IEEE Trans Radiat Plasma Med Sci. 2020 Jun 23;5(1):54-64. doi: 10.1109/TRPMS.2020.3004408.
We propose a forward-backward splitting algorithm to integrate deep learning into maximum- (MAP) positron emission tomography (PET) image reconstruction. The MAP reconstruction is split into regularization, expectation-maximization (EM), and a weighted fusion. For regularization, the use of either a Bowsher prior (using Markov-random fields) or a residual learning unit (using convolutional-neural networks) were considered. For the latter, our proposed forward-backward splitting EM (FBSEM), accelerated with ordered subsets (OS), was unrolled into a recurrent-neural network in which network parameters (including regularization strength) are shared across all states and learned during PET reconstruction. Our network was trained and evaluated using PET-only (FBSEM-p) and PET-MR (FBSEM-pm) datasets for low-dose simulations and short-duration brain imaging. It was compared to OSEM, Bowsher MAPEM, and a post-reconstruction U-Net denoising trained on the same PET-only (Unet-p) or PET-MR (Unet-pm) datasets. For simulations, FBSEM-p(m) and Unet-p(m) nets achieved a comparable performance, on average, 14.4% and 13.4% normalized root-mean square error (NRMSE), respectively; and both outperformed OSEM and MAPEM methods (with 20.7% and 17.7% NRMSE, respectively). For datasets, FBSEM-p(m), Unet-p(m), MAPEM, and OSEM methods achieved average root-sum-of-squared errors of 3.9%, 5.7%, 5.9%, and 7.8% in different brain regions, respectively. In conclusion, the studied U-Net denoising method achieved a comparable performance to a representative implementation of the FBSEM net.
我们提出了一种前向-后向分裂算法,将深度学习集成到最大后验概率(MAP)正电子发射断层扫描(PET)图像重建中。MAP重建被分解为正则化、期望最大化(EM)和加权融合。对于正则化,考虑使用鲍舍尔先验(使用马尔可夫随机场)或残差学习单元(使用卷积神经网络)。对于后者,我们提出的前向-后向分裂EM(FBSEM)算法,通过有序子集(OS)加速,被展开为一个递归神经网络,其中网络参数(包括正则化强度)在所有状态之间共享,并在PET重建过程中进行学习。我们的网络使用仅PET(FBSEM-p)和PET-MR(FBSEM-pm)数据集进行训练和评估,用于低剂量模拟和短时间脑成像。将其与OSEM、鲍舍尔MAPEM以及在相同的仅PET(Unet-p)或PET-MR(Unet-pm)数据集上训练的重建后U-Net去噪方法进行比较。对于模拟,FBSEM-p(m)和Unet-p(m)网络平均分别实现了14.4%和13.4%的归一化均方根误差(NRMSE),性能相当;并且两者均优于OSEM和MAPEM方法(分别为20.7%和17.7%的NRMSE)。对于数据集,FBSEM-p(m)、Unet-p(m)、MAPEM和OSEM方法在不同脑区分别实现了3.9%、5.7%、5.9%和7.8%的平均均方根误差。总之,所研究的U-Net去噪方法与FBSEM网络的代表性实现具有相当的性能。