Direct 4D List Mode Parametric Reconstruction for PET with a Novel EM Algorithm.

Jianhua Yan, Beata Planeta-Wilson, Richard E Carson
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引用次数: 35

Abstract

We present a direct method for producing images of kinetic parameters from list mode PET data. The time-activity curve for each voxel is described by a one-tissue compartment, 2-parameter model. Extending previous EM algorithms, a new spatiotemporal complete data space was introduced to optimize the maximum likelihood function. This leads to a straightforward parametric image update equation with moderate additional computation requirements compared to the conventional algorithm. Qualitative and quantitative evaluations were performed using 2D (x,t) and 4D (x,y,z,t) simulated list mode data for a brain receptor study. Comparisons with the two-step approach (frame-based reconstruction followed by voxel-by-voxel parameter estimation) show that the proposed method can lead to accurate estimation of the parametric image values with reduced variance, especially for the volume of distribution (V(T)).

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一种新的EM算法用于PET的直接四维表模参数重建。
我们提出了一种直接从表模PET数据中产生动力学参数图像的方法。每个体素的时间-活动曲线由一个单组织隔间,2参数模型描述。在原有算法的基础上,引入了一种新的时空完备数据空间来优化最大似然函数。这导致了一个简单的参数图像更新方程,与传统算法相比,它具有适度的额外计算需求。使用2D (x,t)和4D (x,y,z,t)模拟列表模式数据进行脑受体研究的定性和定量评估。与两步方法(基于帧的重建,然后逐体素参数估计)的比较表明,该方法可以准确估计参数图像值,且方差减小,特别是对于分布体积(V(T))。
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