Iterative nonlinear least squares algorithms for direct reconstruction of parametric images from dynamic PET

Guobao Wang, J. Qi
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引用次数: 16

Abstract

Indirect and direct methods have been developed for reconstructing parametric images from dynamic PET data. Indirect methods are relatively simple and easy to implement because the reconstruction and kinetic modeling are performed in two separate steps. Direct methods estimate the parametric images directly from the dynamic PET data and are statistically more efficient, but the algorithms are often difficult to implement. This paper presents a simple, monotonically convergent iterative algorithm for direct reconstruction of parametric images. Each iteration of the proposed algorithm consists of two separate steps: reconstruction of dynamic images followed by a pixel-wise weighted nonlinear least squares fitting. This algorithm resembles the empirical iterative implementation of the indirect approach, but converges to the solution of the direct formulation.
动态PET直接重建参数图像的迭代非线性最小二乘算法
从动态PET数据中重建参数图像的方法有间接法和直接法。间接方法相对简单,易于实现,因为重构和动力学建模是分两个步骤进行的。直接方法直接从动态PET数据中估计参数图像,在统计上效率更高,但算法往往难以实现。提出了一种简单、单调收敛的直接重建参数图像的迭代算法。该算法的每次迭代包括两个独立的步骤:重建动态图像,然后进行逐像素加权非线性最小二乘拟合。该算法类似于间接方法的经验迭代实现,但收敛于直接公式的解。
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