Department of Biomedical Engineering and the Department of Radiology, Duke University, Durham, NC 27710, USA.
IEEE Trans Med Imaging. 2012 Jul;31(7):1426-35. doi: 10.1109/TMI.2012.2192134. Epub 2012 Apr 3.
We present a quantitative analysis of the image quality obtained using filtered back-projection (FBP) with Ram-Lak filtering and maximum likelihood-expectation maximization (ML-EM)-with no post-reconstruction filtering in either case-in neutron stimulated emission computed tomography (NSECT) imaging using Monte Carlo simulations in the context of clinically relevant models of liver iron overload. The ratios of pixel intensities for several regions of interest and lesion shape detection using an active-contours segmentation algorithm are assessed for accuracy across different scanning configurations and reconstruction algorithms. The modulation transfer functions (MTFs) are also computed for the cases under study and are applied to determine a minimum detectable lesion spacing as a form of sensitivity analysis. The accuracy of NSECT imaging in measuring relative tissue concentration is presented for simulated clinical liver cases. When using the 15th iteration, ML-EM provides at least 25% better resolution than FBP and proves to be highly robust under low-signal high-noise conditions prevalent in NSECT. However, FBP gives more accurate lesion pixel intensity ratios and size estimates in some cases; due to advantages provided by both reconstruction algorithms, it is worth exploring the development of an algorithm that is a hybrid of the two. We also show that NSECT imaging can be used to accurately detect 3-cm lesions in backgrounds that are a significant fraction (one-quarter) of the concentration of the lesion, down to a 4-cm spacing between lesions.
我们在临床相关的肝脏铁过载模型中,使用蒙特卡罗模拟,对经过滤波的反向投影(FBP)与拉姆-雷克滤波以及最大似然-期望最大化(ML-EM)-两种情况下均无后重建滤波的图像质量进行了定量分析。在不同的扫描配置和重建算法下,使用主动轮廓分割算法对几个感兴趣区域和病变形状检测的像素强度比进行了准确性评估。还针对所研究的情况计算了调制传递函数(MTF),并将其应用于确定最小可检测病变间距,作为一种敏感性分析形式。还呈现了使用模拟临床肝脏病例的 NSECT 成像来测量相对组织浓度的准确性。使用第 15 次迭代时,ML-EM 提供的分辨率至少比 FBP 好 25%,并且在 NSECT 中普遍存在的低信号高噪声条件下表现出高度稳健性。然而,在某些情况下,FBP 给出了更准确的病变像素强度比和大小估计;由于两种重建算法都具有优势,因此值得探索开发一种混合两种算法的算法。我们还表明,NSECT 成像可用于准确检测背景中浓度为病变四分之一的 3cm 病变,病变之间的间隔可达 4cm。