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Direct Parametric Maps Estimation from Dynamic PET Data: An Iterated Conditional Modes Approach

机译:从动态PET数据直接参数映射估计:迭代条件模式方法

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摘要

We propose and test a novel approach for direct parametric image reconstruction of dynamic PET data. We present a theoretical description of the problem of PET direct parametric maps estimation as an inference problem, from a probabilistic point of view, and we derive a simple iterative algorithm, based on the Iterated Conditional Mode (ICM) framework, which exploits the simplicity of a two-step optimization and the efficiency of an analytic method for estimating kinetic parameters from a nonlinear compartmental model. The resulting method is general enough to be flexible to an arbitrary choice of the kinetic model, and unlike many other solutions, it is capable to deal with nonlinear compartmental models without the need for linearization. We tested its performance on a two-tissue compartment model, including an analytical solution to the kinetic parameters evaluation, based on an auxiliary parameter set, with the aim of reducing computation errors and approximations. The new method is tested on simulated and clinical data. Simulation analysis led to the conclusion that the proposed algorithm gives a good estimation of the kinetic parameters in any noise condition. Furthermore, the application of the proposed method to clinical data gave promising results for further studies.
机译:我们提出并测试了动态PET数据的直接参数图像重建的新方法。我们从概率的角度介绍了PET直接参数图估计作为推理问题的理论描述,并基于迭代条件模式(ICM)框架推导了一种简单的迭代算法,该算法利用了从非线性隔室模型估算动力学参数的两步优化方法和效率。生成的方法具有足够的通用性,可以灵活地选择动力学模型的任意选择,并且与许多其他解决方案不同,它能够处理非线性隔室模型而无需线性化。我们在两组织隔室模型上测试了它的性能,包括基于辅助参数集的动力学参数评估的解析解决方案,目的是减少计算误差和近似值。新方法已在模拟和临床数据上进行了测试。仿真分析得出的结论是,所提出的算法可以很好地估计任何噪声条件下的动力学参数。此外,该方法在临床数据中的应用为进一步研究提供了有希望的结果。

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