PET的加权最小二乘法

J. Anderson, B. Mair, Murali Rao, C.-H. Wu
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引用次数: 8

摘要

本文提出了一种加权最小二乘(WLS)目标函数最小化的正电子发射断层成像重建算法。权重基于模型误差的协方差矩阵,并依赖于未知参数。该算法保证了非负估计,在仿真研究中,它比ML-EM算法收敛得更快,具有明显更好的分辨率和对比度。尽管仿真结果表明该算法是全局收敛的,但尚未找到收敛的证明。然而,作者能够证明它产生的估计随着迭代的增加而单调地减小目标函数。
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A weighted least-squares method for PET
In this paper, the authors present a reconstruction algorithm for positron emission tomography that minimizes a weighted least-squares (WLS) objective function. The weights are based on the covariance matrix of the model error and depend on the unknown parameters. The algorithm guarantees nonnegative estimates, and in simulation studies it converged faster and had significantly better resolution and contrast than the ML-EM algorithm. Although simulations suggest that the proposed algorithm is globally convergent, a proof of convergence has not been found yet. Nevertheless, the authors are able to show that it produces estimates that decrease the objective function monotonically with increasing iterations.
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