Cao Xiaoqing, Xie Qingguo, Xiao Peng
Department of Biomedical Engineering, Huazhong University of Science and Technology, Wuhan 430074, People's Republic of China.
Phys Med Biol. 2015 Jan 7;60(1):49-66. doi: 10.1088/0031-9155/60/1/49. Epub 2014 Dec 5.
List mode format is commonly used in modern positron emission tomography (PET) for image reconstruction due to certain special advantages. In this work, we proposed a list mode based regularized relaxed ordered subset (LMROS) algorithm for static PET imaging. LMROS is able to work with regularization terms which can be formulated as twice differentiable convex functions. Such a versatility would make LMROS a convenient and general framework for fulfilling different regularized list mode reconstruction methods. LMROS was applied to two simulated undersampling PET imaging scenarios to verify its effectiveness. Convex quadratic function, total variation constraint, non-local means and dictionary learning based regularization methods were successfully realized for different cases. The results showed that the LMROS algorithm was effective and some regularization methods greatly reduced the distortions and artifacts caused by undersampling.
列表模式格式由于某些特殊优势,在现代正电子发射断层扫描(PET)中常用于图像重建。在这项工作中,我们提出了一种基于列表模式的正则化松弛有序子集(LMROS)算法用于静态PET成像。LMROS能够与可表述为二次可微凸函数的正则化项一起工作。这种多功能性将使LMROS成为实现不同正则化列表模式重建方法的便捷通用框架。LMROS被应用于两种模拟欠采样PET成像场景以验证其有效性。针对不同情况成功实现了凸二次函数、总变差约束、非局部均值和基于字典学习的正则化方法。结果表明,LMROS算法是有效的,并且一些正则化方法大大减少了欠采样引起的失真和伪影。