Wülker Christian, Sitek Arkadiusz, Prevrhal Sven
Medical Faculty Mannheim, Heidelberg University, Theodor-Kutzer-Ufer 1-3, 68167 Mannheim, Germany.
Phys Med Biol. 2015 Mar 7;60(5):1919-44. doi: 10.1088/0031-9155/60/5/1919. Epub 2015 Feb 10.
The origin ensemble (OE) algorithm is a novel statistical method for minimum-mean-square-error (MMSE) reconstruction of emission tomography data. This method allows one to perform reconstruction entirely in the image domain, i.e. without the use of forward and backprojection operations. We have investigated the OE algorithm in the context of list-mode (LM) time-of-flight (TOF) PET reconstruction. In this paper, we provide a general introduction to MMSE reconstruction, and a statistically rigorous derivation of the OE algorithm. We show how to efficiently incorporate TOF information into the reconstruction process, and how to correct for random coincidences and scattered events. To examine the feasibility of LM-TOF MMSE reconstruction with the OE algorithm, we applied MMSE-OE and standard maximum-likelihood expectation-maximization (ML-EM) reconstruction to LM-TOF phantom data with a count number typically registered in clinical PET examinations. We analyzed the convergence behavior of the OE algorithm, and compared reconstruction time and image quality to that of the EM algorithm. In summary, during the reconstruction process, MMSE-OE contrast recovery (CRV) remained approximately the same, while background variability (BV) gradually decreased with an increasing number of OE iterations. The final MMSE-OE images exhibited lower BV and a slightly lower CRV than the corresponding ML-EM images. The reconstruction time of the OE algorithm was approximately 1.3 times longer. At the same time, the OE algorithm can inherently provide a comprehensive statistical characterization of the acquired data. This characterization can be utilized for further data processing, e.g. in kinetic analysis and image registration, making the OE algorithm a promising approach in a variety of applications.
源集合(OE)算法是一种用于发射断层扫描数据最小均方误差(MMSE)重建的新型统计方法。该方法允许在图像域中完全执行重建,即无需使用前向和后向投影操作。我们在列表模式(LM)飞行时间(TOF)正电子发射断层扫描(PET)重建的背景下研究了OE算法。在本文中,我们提供了MMSE重建的一般介绍以及OE算法的严格统计推导。我们展示了如何有效地将TOF信息纳入重建过程,以及如何校正随机符合事件和散射事件。为了检验使用OE算法进行LM-TOF MMSE重建的可行性,我们将MMSE-OE和标准最大似然期望最大化(ML-EM)重建应用于具有临床PET检查中典型记录计数的LM-TOF体模数据。我们分析了OE算法的收敛行为,并将重建时间和图像质量与EM算法进行了比较。总之,在重建过程中,MMSE-OE对比度恢复(CRV)保持大致相同,而背景变异性(BV)随着OE迭代次数的增加而逐渐降低。最终的MMSE-OE图像显示出比相应的ML-EM图像更低的BV和略低的CRV。OE算法的重建时间大约长1.3倍。同时,OE算法可以固有地提供所采集数据的全面统计特征。这种特征可用于进一步的数据处理,例如在动力学分析和图像配准中,使OE算法在各种应用中成为一种有前途的方法。