Bouallègue Fayçal Ben
From the Department of Biophysics and Nuclear Medicine, Montpellier Medical University, Montpellier, France.
J Comput Assist Tomogr. 2013 Sep-Oct;37(5):770-82. doi: 10.1097/RCT.0b013e31829cb7dd.
In this article, we propose a quantification methodology for estimating the statistical parameters of the activity inside regions of interest (ROIs). Macroquantification implies a rearrangement of the emission projection data into macroprojections and a redefinition of the system matrix based either on an image reconstruction involving iterative ROI-wise regularization or on an ROI uniformity assumption. The technique allows a very fast computation of the ROI activities and covariance matrix in the least squares sense using a low-dimensional model of the tomographic problem. The macroquantification approach is evaluated through Monte Carlo simulations using a numerical thorax phantom, without taking into account the measurement artifacts and assuming a perfect a priori ROI definition. Various tumor ROI configurations and count rates are considered to reflect clinical situations. The results show that our technique yields low-bias ROI estimations that turn out to be more accurate than classical estimates relying on pixel summation. Macroquantification also provides an approximation for the ROI variance that describes the effective variance obtained through the simulations fairly well. The technique is then validated using single photon emission computed tomography (SPECT) data from a physical phantom composed of cylinders filled with different Tc concentrations for the task of ROI comparison. Here again, the study shows excellent agreement between the measured and predicted values of the ROI variance resulting in efficient estimations of ROI ratios and highly accurate ROI comparisons. In its simplest formulation, macroquantification has a short computation time, making it an ideal technique for quantitative ROI assessment that is compatible with a wide range of routine clinical applications.
在本文中,我们提出了一种用于估计感兴趣区域(ROI)内活性统计参数的量化方法。宏观量化意味着将发射投影数据重新排列为宏观投影,并基于涉及迭代ROI方向正则化的图像重建或ROI均匀性假设重新定义系统矩阵。该技术允许使用断层扫描问题的低维模型在最小二乘意义下非常快速地计算ROI活性和协方差矩阵。通过使用数值胸部体模的蒙特卡罗模拟对宏观量化方法进行评估,不考虑测量伪影并假设ROI定义是完美的先验。考虑了各种肿瘤ROI配置和计数率以反映临床情况。结果表明,我们的技术产生的ROI估计偏差低,并且比依赖像素求和的经典估计更准确。宏观量化还为ROI方差提供了一种近似值,该近似值相当好地描述了通过模拟获得的有效方差。然后使用来自由填充不同Tc浓度的圆柱体组成的物理体模的单光子发射计算机断层扫描(SPECT)数据对该技术进行验证,以进行ROI比较任务。同样,该研究表明ROI方差的测量值和预测值之间具有极好的一致性,从而能够有效地估计ROI比率并进行高度准确的ROI比较。在其最简单的形式中,宏观量化具有较短的计算时间,使其成为适用于广泛常规临床应用的定量ROI评估的理想技术。