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Efficient fully 3D list-mode TOF PET image reconstruction using a factorized system matrix with an image domain resolution model

机译:高效的全3D列表模式TOF PET图像重建,使用带图像域分辨率模型的分解系统矩阵

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摘要

A factorized system matrix utilizing an image domain resolution model is attractive in fully 3D time-of-flight PET image reconstruction using list-mode data. In this paper, we study a factored model based on sparse matrix factorization that is comprised primarily of a simplified geometrical projection matrix and an image blurring matrix. Beside the commonly-used Siddon's ray-tracer, we propose another more simplified geometrical projector based on the Bresenham's ray-tracer which further reduces the computational cost. We discuss in general how to obtain an image blurring matrix associated with a geometrical projector, and provide theoretical analysis that can be used to inspect the efficiency in model factorization. In simulation studies, we investigate the performance of the proposed sparse factorization model in terms of spatial resolution, noise properties and computational cost. The quantitative results reveal that the factorization model can be as efficient as a non-factored model, while its computational cost can be much lower. In addition we conduct Monte Carlo simulations to identify the conditions under which the image resolution model can become more efficient in terms of image contrast recovery. We verify our observations using the provided theoretical analysis. The result offers a general guide to achieve the optimal reconstruction performance based on a sparse factorization model with an image domain resolution model.
机译:利用像域分辨率模型的因式分解系统矩阵在使用列表模式数据的全3D飞行时间PET图像重建中具有吸引力。在本文中,我们研究了基于稀疏矩阵分解的分解模型,该模型主要由简化的几何投影矩阵和图像模糊矩阵组成。除了常用的Siddon射线追踪器之外,我们还提出了另一种基于Bresenham射线追踪器的简化几何投影仪,进一步降低了计算成本。我们通常讨论如何获得与几何投影仪关联的图像模糊矩阵,并提供可用于检查模型分解效率的理论分析。在仿真研究中,我们从空间分辨率,噪声属性和计算成本方面研究了所提出的稀疏分解模型的性能。定量结果表明,分解模型可以与非分解模型一样有效,而其计算成本却可以低得多。此外,我们进行了蒙特卡洛模拟,以确定在图像对比度恢复方面图像分辨率模型可以变得更有效率的条件。我们使用提供的理论分析来验证我们的观察结果。结果为基于稀疏分解模型和图像域分辨率模型的最佳重构性能提供了一般指导。

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