Chan Chung, Liu Hui, Grobshtein Yariv, Stacy Mitchel R, Sinusas Albert J, Liu Chi
Department of Radiology and Biomedical Imaging, Yale University, New Haven, Connecticut 06520.
Department of Radiology and Biomedical Imaging, Yale University, New Haven, Connecticut 06520 and Key Laboratory of Particle and Radiation Imaging (Tsinghua University), Ministry of Education, Beijing 100084, China.
Med Phys. 2016 Sep;43(9):5225. doi: 10.1118/1.4961391.
Partial volume correction (PVC) methods typically improve quantification at the expense of increased image noise and reduced reproducibility. In this study, the authors developed a novel voxel-based PVC method that incorporates anatomical knowledge to improve quantification while suppressing noise for cardiac SPECT/CT imaging.
In the proposed method, the SPECT images were first reconstructed using anatomical-based maximum a posteriori (AMAP) with Bowsher's prior to penalize noise while preserving boundaries. A sequential voxel-by-voxel PVC approach (Yang's method) was then applied on the AMAP reconstruction using a template response. This template response was obtained by forward projecting a template derived from a contrast-enhanced CT image, and then reconstructed using AMAP to model the partial volume effects (PVEs) introduced by both the system resolution and the smoothing applied during reconstruction. To evaluate the proposed noise suppressed PVC (NS-PVC), the authors first simulated two types of cardiac SPECT studies: a (99m)Tc-tetrofosmin myocardial perfusion scan and a (99m)Tc-labeled red blood cell (RBC) scan on a dedicated cardiac multiple pinhole SPECT/CT at both high and low count levels. The authors then applied the proposed method on a canine equilibrium blood pool study following injection with (99m)Tc-RBCs at different count levels by rebinning the list-mode data into shorter acquisitions. The proposed method was compared to MLEM reconstruction without PVC, two conventional PVC methods, including Yang's method and multitarget correction (MTC) applied on the MLEM reconstruction, and AMAP reconstruction without PVC.
The results showed that the Yang's method improved quantification, however, yielded increased noise and reduced reproducibility in the regions with higher activity. MTC corrected for PVE on high count data with amplified noise, although yielded the worst performance among all the methods tested on low-count data. AMAP effectively suppressed noise and reduced the spill-in effect in the low activity regions. However it was unable to reduce the spill-out effect in high activity regions. NS-PVC yielded superior performance in terms of both quantitative assessment and visual image quality while improving reproducibility.
The results suggest that NS-PVC may be a promising PVC algorithm for application in low-dose protocols, and in gated and dynamic cardiac studies with low counts.
部分容积校正(PVC)方法通常以增加图像噪声和降低可重复性为代价来改善定量分析。在本研究中,作者开发了一种基于体素的新型PVC方法,该方法结合解剖学知识来改善定量分析,同时抑制心脏SPECT/CT成像中的噪声。
在所提出的方法中,首先使用基于解剖学的最大后验概率(AMAP)并结合鲍舍尔先验对SPECT图像进行重建,以在保留边界的同时惩罚噪声。然后使用模板响应在AMAP重建上应用逐体素顺序PVC方法(杨法)。该模板响应通过对从对比增强CT图像导出的模板进行前向投影获得,然后使用AMAP进行重建,以模拟由系统分辨率和重建过程中应用的平滑处理引入的部分容积效应(PVE)。为了评估所提出的噪声抑制PVC(NS-PVC),作者首先模拟了两种类型的心脏SPECT研究:在专用心脏多孔径SPECT/CT上进行的(99m)锝-替曲膦心肌灌注扫描和(99m)锝标记红细胞(RBC)扫描,扫描计数水平分高、低两种。然后作者通过将列表模式数据重新分组为更短的采集时间,将所提出的方法应用于犬平衡血池研究,该研究在不同计数水平下注射(99m)锝-RBC后进行。将所提出的方法与未进行PVC的MLEM重建、两种传统PVC方法(包括应用于MLEM重建的杨法和多靶点校正(MTC))以及未进行PVC的AMAP重建进行比较。
结果表明,杨法改善了定量分析,但在高活性区域产生了增加的噪声和降低的可重复性。MTC对高计数数据校正了PVE,但噪声放大,在所有测试的低计数数据方法中性能最差。AMAP有效抑制了噪声并减少了低活性区域的溢入效应。然而,它无法减少高活性区域的溢出效应。NS-PVC在定量评估和视觉图像质量方面均表现出优异的性能,同时提高了可重复性。
结果表明,NS-PVC可能是一种有前途的PVC算法,可应用于低剂量方案以及低计数的门控和动态心脏研究。