Performance evaluation of block-iterative algorithms for SPECT reconstruction

Chi Liu, L. Volokh, Xide Zhao, Jingyan Xu, Taek-Soo Lee, B. Tsui
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引用次数: 1

Abstract

The purpose of this study is to evaluate the performance of four block-iterative algorithms, ordered-subsets expectation-maximization (OS-EM), rescaled block-iterative EM (RBI-EM), modified row-action maximum likelihood algorithm (RAMLA) and rescaled block-iterative maximum a posteriori EM (RBI-MAP-EM), for In-111 ProstaScint/spl reg/ SPECT image reconstruction. The 3D NCAT phantom with realistic In-111 ProstaScint/spl reg/ activity distribution was used in the study. Noise-free and noisy projections of the phantom obtained using a medium-energy general-purpose (MEGP) collimator were generated using Monte Carlo simulation methods. For each algorithm, the projection data were reconstructed with the compensations for attenuation, collimator-detector response and scatter. Image quality was evaluated in terms of FWHM of a profile through a small blood vessel, normalized mean square error (NMSE), ensemble normalized standard deviation (NSDE) of a uniform region of interest (ROI) in the reconstructed image measured from 30 noise realizations, and regional NSD (NSDR) of an ROI measure from 1 noise realization. The results indicated that, RBI-EM has superior performance than that of OS-EM when less than 4 views per subset were used and similar performance when 4 or more views per subset were used. Modified RAMLA provides similar image quality with a slower convergence rate than that of OS-EM. Using well-chosen parameters, RBI-MAP-EM provides increased noise smoothing with less loss in resolution and error. We conclude that when compared with OS-EM, the RBI-EM and modified RAMLA have the same performance at a slower convergence rate, while the RBI-MAP-EM has superior performance and can potentially improve image quality.
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SPECT重构分块迭代算法的性能评价
本研究的目的是评估四种块迭代算法的性能,有序子集期望最大化(OS-EM),重新缩放的块迭代EM (RBI-EM),改进的行动作最大似然算法(RAMLA)和重新缩放的块迭代最大后置EM (RBI-MAP-EM),用于In-111 ProstaScint/spl reg/ SPECT图像重建。采用具有真实in -111 ProstaScint/spl reg/ activity分布的三维NCAT假体。采用蒙特卡罗仿真方法生成了利用中能量通用准直器(MEGP)获得的无噪声和有噪声幻像投影。对于每种算法,对投影数据进行了重构,并对衰减、准直-检测器响应和散射进行了补偿。图像质量的评估包括:通过小血管的轮廓的FWHM、30个噪声实现测量的重建图像中的均匀感兴趣区域(ROI)的归一化均方误差(NMSE)、集合归一化标准差(NSDE)以及1个噪声实现测量的ROI的区域NSD (NSDR)。结果表明,当每个子集使用少于4个视图时,RBI-EM的性能优于OS-EM;当每个子集使用4个或更多视图时,RBI-EM的性能与OS-EM相似。改进的RAMLA可以提供与OS-EM相似的图像质量,但收敛速度比OS-EM慢。使用精心选择的参数,RBI-MAP-EM在分辨率和误差损失较小的情况下提供了更好的噪声平滑。我们得出结论,与OS-EM相比,RBI-EM和改进的RAMLA具有相同的性能,但收敛速度较慢,而RBI-MAP-EM具有更好的性能,并且可以潜在地提高图像质量。
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