Ouyang Jinsong, El Fakhri Georges, Moore Stephen C
Department of Radiology, Harvard Medical School and Brigham and Women's Hospital, Boston, Massachusetts 02115, USA.
Med Phys. 2008 May;35(5):2029-40. doi: 10.1118/1.2907561.
We have previously developed a fast Monte Carlo (MC)-based joint ordered-subset expectation maximization (JOSEM) iterative reconstruction algorithm, MC-JOSEM. A phantom study was performed to compare quantitative imaging performance of MC-JOSEM with that of a triple-energy-window approach (TEW) in which estimated scatter was also included additively within JOSEM, TEW-JOSEM. We acquired high-count projections of a 5.5 cm3 sphere of 111In at different locations in the water-filled torso phantom; high-count projections were then obtained with 111In only in the liver or only in the soft-tissue background compartment, so that we could generate synthetic projections for spheres surrounded by various activity distributions. MC scatter estimates used by MC-JOSEM were computed once after five iterations of TEW-JOSEM. Images of different combinations of liver/background and sphere/background activity concentration ratios were reconstructed by both TEW-JOSEM and MC-JOSEM for 40 iterations. For activity estimation in the sphere, MC-JOSEM always produced better relative bias and relative standard deviation than TEW-JOSEM for each sphere location, iteration number, and activity combination. The average relative bias of activity estimates in the sphere for MC-JOSEM after 40 iterations was -6.9%, versus -15.8% for TEW-JOSEM, while the average relative standard deviation of the sphere activity estimates was 16.1% for MC-JOSEM, versus 27.4% for TEW-JOSEM. Additionally, the average relative bias of activity concentration estimates in the liver and the background for MC-JOSEM after 40 iterations was -3.9%, versus -12.2% for TEW-JOSEM, while the average relative standard deviation of these estimates was 2.5% for MC-JOSEM, versus 3.4% for TEW-JOSEM. MC-JOSEM is a promising approach for quantitative activity estimation in 111In SPECT.
我们之前开发了一种基于快速蒙特卡洛(MC)的联合有序子集期望最大化(JOSEM)迭代重建算法,即MC-JOSEM。进行了一项体模研究,以比较MC-JOSEM与三能量窗方法(TEW)的定量成像性能,在TEW中,估计的散射也被加性地纳入JOSEM中,即TEW-JOSEM。我们在充满水的躯干体模中的不同位置采集了5.5 cm³ 的¹¹¹In球体的高计数投影;然后仅在肝脏或仅在软组织背景隔室中使用¹¹¹In获得高计数投影,以便我们可以生成被各种活度分布包围的球体的合成投影。MC-JOSEM使用的MC散射估计在TEW-JOSEM进行五次迭代后计算一次。通过TEW-JOSEM和MC-JOSEM对肝脏/背景和球体/背景活度浓度比的不同组合的图像进行40次迭代重建。对于球体中的活度估计,对于每个球体位置、迭代次数和活度组合,MC-JOSEM始终比TEW-JOSEM产生更好的相对偏差和相对标准偏差。MC-JOSEM在40次迭代后球体活度估计的平均相对偏差为-6.9%,而TEW-JOSEM为-15.8%,而球体活度估计的平均相对标准偏差对于MC-JOSEM为16.1%,而TEW-JOSEM为27.4%。此外,MC-JOSEM在40次迭代后肝脏和背景中活度浓度估计的平均相对偏差为-3.9%,而TEW-JOSEM为-12.2%,而这些估计的平均相对标准偏差对于MC-JOSEM为2.5%,而TEW-JOSEM为3.4%。MC-JOSEM是¹¹¹In SPECT中定量活度估计的一种有前景的方法。