APDATA-ANMED-PHMLAug 24, 2018

Probabilistic Graphical Modeling approach to dynamic PET direct parametric map estimation and image reconstruction

arXiv:1808.08286v1
Originality Incremental advance
AI Analysis

This work addresses the need for more robust and flexible direct reconstruction methods in medical imaging, offering an incremental improvement over existing deterministic approaches.

The paper tackled the problem of dynamic PET image reconstruction by introducing a probabilistic graphical modeling approach that accounts for uncertainty in activity time courses, enabling flexible kinetic model integration and prior inclusion, with results validated through simulations and a real patient scan.

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. The relatively new field of 4D PET direct reconstruction, by contrast, seeks to move beyond this scheme and incorporate information from multiple time frames within the reconstruction task. Existing 4D direct models are based on a deterministic description of voxels' TACs, captured by the chosen kinetic model, considering the photon counting process the only source of uncertainty. In this work, 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 were known. This leads to a hierarchical Bayesian model, which we formulate using the formalism of Probabilistic Graphical Modeling (PGM). The inference of the joint probability density function arising from PGM is addressed using a new gradient-based iterative algorithm, which presents several advantages compared to existing direct methods: it is flexible to an arbitrary choice of linear and nonlinear kinetic model; it enables the inclusion of arbitrary (sub)differentiable priors for parametric maps; it is simpler to implement and suitable to integration in computing frameworks for machine learning. Computer simulations and an application to real patient scan showed how the proposed approach allows us to weight the importance of the kinetic model, providing a bridge between indirect and deterministic direct methods.

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