Turkheimer Federico E, Aston John A D, Banati Richard B, Riddell Cyril, Cunningham Vincent J
IRSL, Cyclotron Building, Hammersmith Hospital, DuCane Road, London W12 0NN, UK.
IEEE Trans Med Imaging. 2003 Mar;22(3):289-301. doi: 10.1109/TMI.2003.809597.
This paper describes a new filter for parametric images obtained from dynamic positron emission tomography (PET) studies. The filter is based on the wavelet transform following the heuristics of a previously published method that are here developed into a rigorous theoretical framework. It is shown that the space-time problem of modeling a dynamic PET sequence reduces to the classical one of estimation of a normal multivariate vector of independent wavelet coefficients that, under least-squares risk, can be solved by straightforward application of well established theory. From the study of the distribution of wavelet coefficients of PET images, it is inferred that a James-Stein linear estimator is more suitable for the problem than traditional nonlinear procedures that are incorporated in standard wavelet filters. This is confirmed by the superior performance of the James-Stein filter in simulation studies compared to a state-of-the-art nonlinear wavelet filter and a nonstationary filter selected from literature. Finally, the formal framework is interpreted for the practitioner's point of view and advantages and limitations of the method are discussed.
本文描述了一种用于从动态正电子发射断层扫描(PET)研究中获取的参数图像的新型滤波器。该滤波器基于小波变换,遵循先前发表方法的启发式方法,并在此处发展为一个严格的理论框架。结果表明,对动态PET序列进行建模的时空问题简化为估计独立小波系数的正态多元向量这一经典问题,在最小二乘风险下,可通过直接应用成熟理论来解决。通过对PET图像小波系数分布的研究,推断出与标准小波滤波器中包含的传统非线性方法相比,詹姆斯 - 斯坦线性估计器更适合该问题。与从文献中选取的一种先进的非线性小波滤波器和一种非平稳滤波器相比,詹姆斯 - 斯坦滤波器在模拟研究中的优越性能证实了这一点。最后,从从业者的角度对形式框架进行了解释,并讨论了该方法的优缺点。