Gao Juan, Liu Qiegen, Zhou Chao, Zhang Weiguang, Wan Qian, Hu Chenxi, Gu Zheng, Liang Dong, Liu Xin, Yang Yongfeng, Zheng Hairong, Hu Zhanli, Zhang Na
Lauterbur Research Center for Biomedical Imaging, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.
Chinese Academy of Sciences Key Laboratory of Health Informatics, Shenzhen, China.
Quant Imaging Med Surg. 2021 Feb;11(2):556-570. doi: 10.21037/qims-20-19.
Statistical reconstruction methods based on penalized maximum likelihood (PML) are being increasingly used in positron emission tomography (PET) imaging to reduce noise and improve image quality. Wang and Qi proposed a patch-based edge-preserving penalties algorithm that can be implemented in three simple steps: a maximum-likelihood expectation-maximization (MLEM) image update, an image smoothing step, and a pixel-by-pixel image fusion step. The pixel-by-pixel image fusion step, which fuses the MLEM updated image and the smoothed image, involves a trade-off between preserving the fine structural features of an image and suppressing noise. Particularly when reconstructing images from low-count data, this step cannot preserve fine structural features in detail. To better preserve these features and accelerate the algorithm convergence, we proposed to improve the patch-based regularization reconstruction method.
Our improved method involved adding a total variation (TV) regularization step following the MLEM image update in the patch-based algorithm. A feature refinement (FR) step was then used to extract the lost fine structural features from the residual image between the TV regularized image and the fused image based on patch regularization. These structural features would then be added back to the fused image. With the addition of these steps, each iteration of the image should gain more structural information. A brain phantom simulation experiment and a mouse study were conducted to evaluate our proposed improved method. Brain phantom simulation with added noise were used to determine the feasibility of the proposed algorithm and its acceleration of convergence. Data obtained from the mouse study were divided into event count sets to validate the performance of the proposed algorithm when reconstructing images from low-count data. Five criteria were used for quantitative evaluation: signal-to-noise ratio (SNR), covariance (COV), contrast recovery coefficient (CRC), regional relative bias, and relative variance.
The bias and variance of the phantom brain image reconstructed using the patch-based method were 0.421 and 5.035, respectively, and this process took 83.637 seconds. The bias and variance of the image reconstructed by the proposed improved method, however, were 0.396 and 4.568, respectively, and this process took 41.851 seconds. This demonstrates that the proposed algorithm accelerated the reconstruction convergence. The CRC of the phantom brain image reconstructed using the patch-based method was iterated 20 times and reached 0.284, compared with the proposed method, which reached 0.446. When using a count of 5,000 K data obtained from the mouse study, both the patch-based method and the proposed method reconstructed images similar to the ground truth image. The intensity of the ground truth image was 88.3, and it was located in the 102 row and the 116 column. However, when the count was reduced to below 40 K, and the patch-based method was used, image quality was significantly reduced. This effect was not observed when the proposed method was used. When a count of 40 K was used, the image intensity was 58.79 when iterated 100 times by the patch-based method, and it was located in the 102 row and the 116 column, while the intensity when iterated 50 times by the proposed method was 63.83. This suggests that the proposed method improves image reconstruction from low-count data.
This improved method of PET image reconstruction could potentially improve the quality of PET images faster than other methods and also produce better reconstructions from low-count data.
基于惩罚最大似然(PML)的统计重建方法在正电子发射断层扫描(PET)成像中越来越多地被用于减少噪声并提高图像质量。Wang和Qi提出了一种基于补丁的边缘保留惩罚算法,该算法可以通过三个简单步骤实现:最大似然期望最大化(MLEM)图像更新、图像平滑步骤以及逐像素图像融合步骤。逐像素图像融合步骤将MLEM更新后的图像和平滑后的图像进行融合,这涉及到在保留图像精细结构特征和抑制噪声之间进行权衡。特别是在从低计数数据重建图像时,此步骤无法详细保留精细结构特征。为了更好地保留这些特征并加速算法收敛,我们提出改进基于补丁的正则化重建方法。
我们改进的方法包括在基于补丁的算法中,在MLEM图像更新之后添加一个全变差(TV)正则化步骤。然后使用一个特征细化(FR)步骤,基于补丁正则化从TV正则化图像和融合图像之间的残差图像中提取丢失的精细结构特征。然后将这些结构特征添加回融合图像中。通过添加这些步骤,图像的每次迭代都应获得更多的结构信息。进行了脑体模模拟实验和小鼠研究以评估我们提出的改进方法。添加噪声的脑体模模拟用于确定所提出算法的可行性及其收敛加速情况。从小鼠研究中获得的数据被分成事件计数集,以验证所提出算法在从低计数数据重建图像时的性能。使用五个标准进行定量评估:信噪比(SNR)、协方差(COV)、对比度恢复系数(CRC)、区域相对偏差和相对方差。
使用基于补丁的方法重建的体模脑图像的偏差和方差分别为0.421和5.035,此过程耗时83.637秒。然而,所提出的改进方法重建的图像的偏差和方差分别为0.396和4.568,此过程耗时41.851秒。这表明所提出的算法加速了重建收敛。使用基于补丁的方法重建的体模脑图像的CRC迭代20次后达到0.284,而所提出的方法达到0.446。当使用从小鼠研究中获得的5000K计数数据时,基于补丁的方法和所提出的方法重建的图像都与真实图像相似。真实图像的强度为88.3,位于第第102行和第116列。然而,当计数减少到40K以下并使用基于补丁的方法时,图像质量显著下降。使用所提出的方法时未观察到这种效果。当使用40K计数时,基于补丁的方法迭代100次后的图像强度为58.79,位于第102行和第116列,而所提出的方法迭代50次后的强度为63.83。这表明所提出的方法改善了从低计数数据的图像重建。
这种改进的PET图像重建方法可能比其他方法更快地提高PET图像质量,并且在从低计数数据进行重建时也能产生更好的结果。