Kamphuis C, Beekman F J, van Rijk P P, Viergever M A
Image Sciences Institute, Utrecht University/University Hospital Utrecht, The Netherlands.
Eur J Nucl Med. 1998 Jan;25(1):8-18. doi: 10.1007/s002590050188.
Three-dimensional (3D) iterative maximum likelihood expectation maximization (ML-EM) algorithms for single-photon emission tomography (SPET) are capable of correcting image-degrading effects of non-uniform attenuation, distance-dependent camera response and patient shape-dependent scatter. However, the resulting improvements in quantitation, resolution and signal-to-noise ratio (SNR) are obtained at the cost of a huge computational burden. This paper presents a new acceleration method for ML-EM: dual matrix ordered subsets (DM-OS). DM-OS combines two acceleration methods: (a) different matrices for projection and back-projection and (b) ordered subsets of projections. DM-OS was compared with ML-EM on simulated data and on physical thorax phantom data, for both 180 degrees and 360 degrees orbits. Contrast, normalized standard deviation and mean squared error were calculated for the digital phantom experiment. DM-OS resulted in similar image quality to ML-EM, even for speed-up factors of 200 compared to ML-EM in the case of 120 projections. The thorax phantom data could be reconstructed 50 times faster (60 projections) using DM-OS with preservation of image quality. ML-EM and DM-OS with scatter compensation showed significant improvement of SNR compared to ML-EM without scatter compensation. Furthermore, inclusion of complex image formation models in the computer code is simplified in the case of DM-OS. It is thus shown that DM-OS is a fast and relatively simple algorithm for 3D iterative scatter compensation, with similar results to conventional ML-EM, for both 180 degrees and 360 degrees acquired data.
用于单光子发射断层扫描(SPET)的三维(3D)迭代最大似然期望最大化(ML-EM)算法能够校正非均匀衰减、距离依赖性相机响应和患者形状依赖性散射等图像退化效应。然而,在定量、分辨率和信噪比(SNR)方面所取得的改进是以巨大的计算负担为代价的。本文提出了一种用于ML-EM的新加速方法:双矩阵有序子集(DM-OS)。DM-OS结合了两种加速方法:(a)用于投影和反投影的不同矩阵,以及(b)投影的有序子集。在模拟数据和物理胸部体模数据上,针对180度和360度轨道,将DM-OS与ML-EM进行了比较。针对数字体模实验计算了对比度、归一化标准差和均方误差。即使在120次投影的情况下,与ML-EM相比加速因子达到200,DM-OS所得到的图像质量仍与ML-EM相似。使用DM-OS可以在保持图像质量的情况下将胸部体模数据的重建速度提高50倍(60次投影)。与无散射补偿的ML-EM相比,具有散射补偿的ML-EM和DM-OS在SNR方面有显著提高。此外,在DM-OS的情况下,计算机代码中复杂图像形成模型的纳入得到了简化。因此表明,对于180度和360度采集的数据,DM-OS是一种快速且相对简单的用于三维迭代散射补偿的算法,其结果与传统的ML-EM相似。