Department of Radiology, Brigham and Women’s Hospital and Harvard Medical School, Boston, MA 02115 USA.
IEEE Trans Med Imaging. 2012 Feb;31(2):405-16. doi: 10.1109/TMI.2011.2169981. Epub 2011 Sep 29.
We have developed a new method of compensating for effects of partial volume and spillover in dual-modality imaging. The approach requires segmentation of just a few tissue types within a small volume-of-interest (VOI) surrounding a lesion; the algorithm estimates simultaneously, from projection data, the activity concentration within each segmented tissue inside the VOI. Measured emission projections were fitted to the sum of resolution-blurred projections of each such tissue, scaled by its unknown activity concentration, plus a global background contribution obtained by reprojection through the reconstructed image volume outside the VOI. The method was evaluated using multiple-pinhole μSPECT data simulated for the MOBY mouse phantom containing two spherical lung tumors and one liver tumor, as well as using multiple-bead phantom data acquired on μSPECT and μCT scanners. Each VOI in the simulation study was 4.8 mm (12 voxels) cubed and, depending on location, contained up to four tissues (tumor, liver, heart, lung) with different values of relative (99m)Tc concentration. All tumor activity estimates achieved bias after ∼ 15 ordered-subsets expectation maximization (OSEM) iterations (×10 subsets) , with better than 8% precision ( ≤ 25% greater than the Cramer-Rao lower bound). The projection-based fitting approach also outperformed three standardized uptake value (SUV)-like metrics, one of which was corrected for count spillover. In the bead phantom experiment, the mean ± standard deviation of the bias of VOI estimates of bead concentration were 0.9±9.5%, comparable to those of a perturbation geometric transfer matrix (pGTM) approach (-5.4±8.6%); however, VOI estimates were more stable with increasing iteration number than pGTM estimates, even in the presence of substantial axial misalignment between μCT and μSPECT image volumes.
我们开发了一种新的方法来补偿双模态成像中部分容积和溢出的影响。该方法仅需要在病变周围的小感兴趣区域 (VOI) 内分割少数几种组织类型;该算法从投影数据中同时估计 VOI 内每个分割组织内的活性浓度。测量的发射投影与每个组织的分辨率模糊投影的总和拟合,乘以其未知的活性浓度,再加上通过 VOI 外的重建图像体积重新投影获得的全局背景贡献。该方法使用包含两个球形肺肿瘤和一个肝肿瘤的 MOBY 小鼠体模的多针孔 μSPECT 数据进行了评估,以及使用在 μSPECT 和 μCT 扫描仪上采集的多珠体模数据进行了评估。模拟研究中的每个 VOI 为 4.8 毫米(12 个体素)立方,并且根据位置,包含多达四种具有不同(99m)Tc 浓度相对值的组织(肿瘤、肝脏、心脏、肺)。所有肿瘤活性估计值在经过约 15 次有序子集期望最大化 (OSEM) 迭代(×10 个子集)后都有偏差,精度优于 8%(≤比 Cramer-Rao 下限高 25%)。基于投影的拟合方法也优于三种标准化摄取值 (SUV) 类似的指标,其中一种指标针对计数溢出进行了校正。在珠体模实验中,珠体浓度 VOI 估计值的偏差平均值±标准偏差为 0.9±9.5%,与扰动几何传递矩阵 (pGTM) 方法(-5.4±8.6%)相当;然而,与 pGTM 估计值相比,随着迭代次数的增加,VOI 估计值更加稳定,即使在 μCT 和 μSPECT 图像体积之间存在明显的轴向不对准的情况下也是如此。