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具有子迭代相关预处理的快速收敛有序子集算法在 PET 图像重建中的应用。

A Fast Convergent Ordered-Subsets Algorithm With Subiteration-Dependent Preconditioners for PET Image Reconstruction.

出版信息

IEEE Trans Med Imaging. 2022 Nov;41(11):3289-3300. doi: 10.1109/TMI.2022.3181813. Epub 2022 Oct 27.

Abstract

We investigated the imaging performance of a fast convergent ordered-subsets algorithm with subiteration-dependent preconditioners (SDPs) for positron emission tomography (PET) image reconstruction. In particular, we considered the use of SDP with the block sequential regularized expectation maximization (BSREM) approach with the relative difference prior (RDP) regularizer due to its prior clinical adaptation by vendors. Because the RDP regularization promotes smoothness in the reconstructed image, the directions of the gradients in smooth areas more accurately point toward the objective function's minimizer than those in variable areas. Motivated by this observation, two SDPs have been designed to increase iteration step-sizes in the smooth areas and reduce iteration step-sizes in the variable areas relative to a conventional expectation maximization preconditioner. The momentum technique used for convergence acceleration can be viewed as a special case of SDP. We have proved the global convergence of SDP-BSREM algorithms by assuming certain characteristics of the preconditioner. By means of numerical experiments using both simulated and clinical PET data, we have shown that the SDP-BSREM algorithms substantially improve the convergence rate, as compared to conventional BSREM and a vendor's implementation as Q.Clear. Specifically, SDP-BSREM algorithms converge 35%-50% faster in reaching the same objective function value than conventional BSREM and commercial Q.Clear algorithms. Moreover, we showed in phantoms with hot, cold and background regions that the SDP-BSREM algorithms approached the values of a highly converged reference image faster than conventional BSREM and commercial Q.Clear algorithms.

摘要

我们研究了一种具有子迭代相关预处理器 (SDP) 的快速收敛有序子集算法在正电子发射断层扫描 (PET) 图像重建中的成像性能。特别是,我们考虑了使用 SDP 与块序贯正则期望最大化 (BSREM) 方法结合相对差先验 (RDP) 正则化,因为供应商已经对其进行了临床前适应。由于 RDP 正则化促进了重建图像的平滑度,因此在平滑区域中的梯度方向比在变量区域中的梯度方向更准确地指向目标函数的最小值。受此观察结果的启发,设计了两种 SDP,以相对于传统期望最大化预处理器在平滑区域中增加迭代步长,并在变量区域中减少迭代步长。用于加速收敛的动量技术可以看作是 SDP 的一个特例。通过假设预处理器的某些特性,我们证明了 SDP-BSREM 算法的全局收敛性。通过使用模拟和临床 PET 数据进行数值实验,我们表明 SDP-BSREM 算法与传统 BSREM 和供应商的实现 (Q.Clear) 相比,显著提高了收敛速度。具体来说,与传统的 BSREM 和商业 Q.Clear 算法相比,SDP-BSREM 算法在达到相同目标函数值时的收敛速度快 35%-50%。此外,我们在具有热点、冷点和背景区域的幻影中表明,SDP-BSREM 算法比传统的 BSREM 和商业 Q.Clear 算法更快地接近高度收敛的参考图像的值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5c2b/9810102/8e52b577b04d/nihms-1846006-f0001.jpg

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