Zheng Wei, Li Si, Krol Andrzej, Schmidtlein C Ross, Zeng Xueying, Xu Yuesheng
School of Mathematics, and Guangdong Provincial Key Lab of Computational Science, Sun Yat-sen University, Guangzhou 510275, People's Republic of China.
School of Computer Science and Technology, Guangdong University of Technology, Guangzhou 510006, People's Republic of China.
Inverse Probl. 2019 Nov;35(11). doi: 10.1088/1361-6420/ab23da. Epub 2019 Oct 4.
The purpose of this research is to develop an advanced reconstruction method for low-count, hence high-noise, single-photon emission computed tomography (SPECT) image reconstruction. It consists of a novel reconstruction model to suppress noise while conducting reconstruction and an efficient algorithm to solve the model. A novel regularizer is introduced as the nonconvex denoising term based on the approximate sparsity of the image under a geometric tight frame transform domain. The deblurring term is based on the negative log-likelihood of the SPECT data model. To solve the resulting nonconvex optimization problem a preconditioned fixed-point proximity algorithm (PFPA) is introduced. We prove that under appropriate assumptions, PFPA converges to a local solution of the optimization problem at a global convergence rate. Substantial numerical results for simulation data are presented to demonstrate the superiority of the proposed method in denoising, suppressing artifacts and reconstruction accuracy. We simulate noisy 2D SPECT data from two phantoms: hot Gaussian spheres on random lumpy warm background, and the anthropomorphic brain phantom, at high- and low-noise levels (64k and 90k counts, respectively), and reconstruct them using PFPA. We also perform limited comparative studies with selected competing state-of-the-art total variation (TV) and higher-order TV (HOTV) transform-based methods, and widely used post-filtered maximum-likelihood expectation-maximization. We investigate imaging performance of these methods using: contrast-to-noise ratio (CNR), ensemble variance images (EVI), background ensemble noise (BEN), normalized mean-square error (NMSE), and channelized hotelling observer (CHO) detectability. Each of the competing methods is independently optimized for each metric. We establish that the proposed method outperforms the other approaches in all image quality metrics except NMSE where it is matched by HOTV. The superiority of the proposed method is especially evident in the CHO detectability tests results. We also perform qualitative image evaluation for presence and severity of image artifacts where it also performs better in terms of suppressing 'staircase' artifacts, as compared to TV methods. However, edge artifacts on high-contrast regions persist. We conclude that the proposed method may offer a powerful tool for detection tasks in high-noise SPECT imaging.
本研究的目的是开发一种先进的重建方法,用于低计数(即高噪声)的单光子发射计算机断层扫描(SPECT)图像重建。它包括一个在进行重建时抑制噪声的新型重建模型和一个求解该模型的高效算法。引入了一种新型正则化器作为基于几何紧框架变换域下图像近似稀疏性的非凸去噪项。去模糊项基于SPECT数据模型的负对数似然。为了解决由此产生的非凸优化问题,引入了一种预处理定点近似算法(PFPA)。我们证明,在适当的假设下,PFPA以全局收敛速度收敛到优化问题的局部解。给出了大量模拟数据的数值结果,以证明所提方法在去噪、抑制伪影和重建精度方面的优越性。我们模拟了来自两个体模的有噪声二维SPECT数据:随机块状温暖背景上的热高斯球体和人体大脑体模,分别处于高噪声和低噪声水平(分别为64k和90k计数),并使用PFPA对其进行重建。我们还与选定的基于竞争的最先进全变差(TV)和高阶TV(HOTV)变换的方法以及广泛使用的后滤波最大似然期望最大化方法进行了有限的比较研究。我们使用对比度噪声比(CNR)、总体方差图像(EVI)、背景总体噪声(BEN)、归一化均方误差(NMSE)和通道化霍特林观察者(CHO)可检测性来研究这些方法的成像性能。每种竞争方法都针对每个指标进行独立优化。我们确定,所提方法在所有图像质量指标上均优于其他方法,但在NMSE方面与HOTV相当。所提方法的优越性在CHO可检测性测试结果中尤为明显。我们还对图像伪影的存在和严重程度进行了定性图像评估,与TV方法相比,在所提方法在抑制“阶梯”伪影方面也表现更好。然而,高对比度区域的边缘伪影仍然存在。我们得出结论,所提方法可能为高噪声SPECT成像中的检测任务提供一个强大的工具。