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首页> 外文期刊>IEEE Transactions on Medical Imaging >Probabilistic Graphical Models for Dynamic PET: A Novel Approach to Direct Parametric Map Estimation and Image Reconstruction
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Probabilistic Graphical Models for Dynamic PET: A Novel Approach to Direct Parametric Map Estimation and Image Reconstruction

机译:动态PET的概率图形模型:直接参数映射估计和图像重建的新方法

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In the context of dynamic emission tomography, the conventional processing pipeline consists of independent image reconstruction of single-time frames, followed by the application of a suitable kinetic model to time-activity curves (TACs) at the voxel or region-of-interest level. Direct 4D positron emission tomography (PET) reconstruction, by contrast, seeks to move beyond this scheme and incorporate information from multiple time frames within the reconstruction task. Established direct methods are based on a deterministic description of voxelwise TACs, captured by the chosen kinetic model, considering the photon counting process the only source of uncertainty. In this paper, we introduce a new probabilistic modeling strategy based on the key assumption that activity time course would be subject to uncertainty even if the parameters of the underlying dynamic process are known. This leads to a hierarchical model that we formulate using the formalism of probabilistic graphical modeling. The inference is addressed using a new iterative algorithm, in which kinetic modeling results are treated as prior expectation of activity time course, rather than as a deterministic match, making it possible to control the trade-off between a data-driven and a model-driven reconstruction. The proposed method is flexible to an arbitrary choice of (linear and nonlinear) kinetic models, it enables the inclusion of arbitrary (sub)differentiable priors for parametric maps, and it is simple to implement. Computer simulations and an application to a real-patient scan show how the proposed method is able to generalize over conventional indirect and direct approaches, providing a bridge between them by properly tuning the impact of the kinetic modeling step on image reconstruction.
机译:在动态发射体层摄影术的背景下,常规处理流程包括对单个时间帧的独立图像重建,然后在体素或感兴趣区域级别将适当的动力学模型应用于时间活动曲线(TAC) 。相比之下,直接4D正电子发射断层扫描(PET)重建试图超越此方案,并将来自多个时间范围的信息纳入重建任务中。既定的直接方法是基于对选定的动力学模型捕获的体素TAC的确定性描述,考虑到光子计数过程是唯一的不确定性来源。在本文中,我们引入了一种新的概率建模策略,该策略基于以下关键假设:即使知道基本动态过程的参数,活动时间也会受到不确定性的影响。这将导致我们使用概率图形建模的形式主义来制定层次模型。使用新的迭代算法解决了这一推理,其中动力学建模结果被视为活动时间过程的先前期望,而不是确定性匹配,从而可以控制数据驱动的模型与模型之间的权衡。驱动的重建。所提出的方法对于任意选择(线性和非线性)动力学模型是灵活的,它使得能够为参数映射包括任意(亚)可微先验,并且易于实现。计算机仿真及其在实际患者扫描中的应用表明,所提出的方法如何能够概括常规的间接和直接方法,并通过适当地调整动力学建模步骤对图像重建的影响,在传统方法之间建立了桥梁。

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