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New statistical reconstruction method for emission tomography

机译:断层扫描的统计重建新方法

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The topic of the reconstruction of data acquired in emission tomography is examined in this work. A new statistical estimator of voxel activities is derived assuming Poisson statistics of the data. A Monte Carlo algorithm to calculate the estimator and its covariance is provided. The estimator is based on the calculation of expectations of random variables which differ from commonly used iterative optimization approaches based on maximum likelihood (ML) or posterior likelihood (MAP) principles. The new estimator is defined as the expectation of maximized activities in complete-data (C-D) space (EMACS). A new super-complete-data space (also refereed to as origin ensemble space) is defined. Using this discrete space the EMACS estimator and its covariance is computed using Markov Chain process. An example of the application of EMACS for 3D positron emission tomography (PET) is presented. The compute intensive projection and backprojection operations are not used in EMACS. This may constitute a major advantage in terms of computing time for systems with complex acquisition geometries (e.g. Compton Camera) and for systems with accurate modeling of the physics of the data acquisition (e.g. detector spatial and energy resolutions).
机译:在这项工作中,将讨论重建放射线断层摄影术中获取的数据的主题。假设数据的泊松统计量,可以得出一个新的体素活动统计估计量。提供了一种用于计算估计量及其协方差的蒙特卡洛算法。估计器基于对随机变量的期望值的计算,该期望值与基于最大似然(ML)或后验似然(MAP)原理的常用迭代优化方法不同。新的估算器定义为对完整数据(C-D)空间(EMACS)中最大化活动的期望。定义了一个新的超完整数据空间(也称为原点集成空间)。使用此离散空间,可使用马尔可夫链过程计算EMACS估计量及其协方差。给出了EMACS在3D正电子发射断层扫描(PET)中的应用示例。 EMACS中不使用计算密集型投影和反投影操作。就具有复杂采集几何形状的系统(例如康普顿相机)和具有对数据采集物理特性的精确建模(例如探测器空间和能量分辨率)的系统的计算时间而言,这可以构成主要优势。

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