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Use of optimization transfer for enhanced direct 4D parametric imaging in myocardial perfusion PET

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TLDR
In this article, the authors investigated application of optimization transfer via construction of a surrogate function to achieve quantitative myocardial perfusion PET via direct 4D parametric imaging, which is commonly achieved via maximization of the Poisson log-likelihood function as expressed in the sinogram-domain.
Abstract
265 Objectives To investigate application of optimization transfer, via construction of a surrogate function, to achieve quantitative myocardial perfusion PET via direct 4D parametric imaging. Methods Direct 4D parametric imaging in dynamic PET is commonly achieved via maximization of the Poisson log-likelihood (LL) function as expressed in the sinogram-domain. This optimization problem can be transferred to a surrogate function optimization task in the image-domain including iterative updates of the surrogate function, resulting in decoupling of the kinetic-parameter-to-image and image-to-sinogram relationships at every iteration. We applied this technique to direct 4D estimation of the forward transport K1 parameter (used to estimate myocardial blood flow). The algorithm incorporates preconditioned steepest ascent optimization of the Poisson log-likelihood surrogate function as constructed in every update. Clinical count-level simulations were performed for Rb-82 PET imaging based on real patient Rb-82 PET data on the GE Discovery RX PET/CT. Quantitative accuracy was assessed via noise (NSD) vs. bias (NMSE) trade-off curves for the entirety of the left ventricle (LV) as well as ten separate regions in the polar map. Results The technique was seen to quantitatively outperform, not only conventional K1 parameter estimation performed post-reconstruction, but also direct 4D parametric estimation via sinogram-domain LL function optimization (over 15% reduction in noise; matched bias). Compared to the latter, a significant factor of 5 improvement in computational efficiency was also achieved due to the abovementioned decoupling between the sinogram and image space domains. Conclusions Optimization transfer via construction of an image-domain surrogate function can significantly enhance quantitative and computational performance of direct parametric estimation as applied to myocardial perfusion PET imaging

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Journal ArticleDOI

Direct 4D parametric imaging for linearized models of reversibly binding PET tracers using generalized AB-EM reconstruction.

TL;DR: Direct 4D EM reconstruction resulted in notable qualitative and quantitative accuracy improvements and improvements were also observed in the coefficient of variation of the estimated DV and DVR values even for relatively low uptake cortical regions, suggesting the enhanced ability for robust parameter estimation.

Direct 4D Parametric Imaging in Dynamic Myocardial Perfusion PET

TL;DR: Direct 4D PET image reconstruction is a viable and very promising approach towards robust parametric MP PET imaging at the individual voxel level and reduces noise by over 50% (matched bias), with further reductions of15% in noise and a factor of five speed-up when optimization transfer was additionally utilized.
Journal ArticleDOI

Application of adaptive kinetic modelling for bias propagation reduction in direct 4D image reconstruction

TL;DR: Substantial bias reduction due to propagation in all kinetic parameters using the proposed 4-D method is demonstrated and the overall bias is reduced with improvements depending on the proximity of regions of interest to badly modeled regions and the choice of the secondary model space.
Proceedings ArticleDOI

Application of adaptive kinetic modeling for bias propagation reduction in direct 4D image reconstruction

TL;DR: Substantial bias reduction due to propagation in all kinetic parameters using the proposed 4-D method is demonstrated and the overall bias is reduced with improvements depending on the proximity of regions of interest to badly modeled regions and the choice of the secondary model space.
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