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Parallel algorithm and hybrid regularization for dynamic PET reconstruction

机译:动态PET重建的并行算法和混合正则化

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To improve the estimation at the voxel level in dynamic Positron Emission Tomography (PET) imaging, we propose to develop a convex optimization approach based on a recently proposed parallel proximal method (PPXA). This class of algorithms was successfully employed for 2D deconvolution in the presence of Poisson noise and it is extended here to (dynamic) space + time PET image reconstruction. Hybrid regularization defined as a sum of a total variation and a sparsity measure is considered in this paper. The total variation is applied to each temporal-frame and a wavelet regularization is considered for the space+time data. Total variation allows us to smooth the wavelet artifacts introduced when the wavelet regularization is used alone. The proposed algorithm was evaluated on simulated dynamic fluorodeoxyglucose (FDG) brain data and compared with a regularized Expectation Maximization (EM) reconstruction. From the reconstructed dynamic images, parametric maps of the cerebral metabolic rate of glucose (CMRglu) were computed. Our approach shows a better reconstruction at the voxel level.
机译:为了改善动态正电子发射断层扫描(PET)成像中体素水平的估计,我们建议基于最近提出的并行近端方法(PPXA)开发一种凸优化方法。此类算法已在存在Poisson噪声的情况下成功地用于2D反卷积,并且在这里扩展到了(动态)空间+时间PET图像重建。本文考虑将混合正则化定义为总变异和稀疏度量的总和。将总变化应用于每个时间帧,并考虑对时空数据进行小波正则化。总变化使我们能够平滑单独使用小波正则化时引入的小波伪像。该算法在模拟动态氟脱氧葡萄糖(FDG)脑数据上进行了评估,并与常规化的期望最大化(EM)重建进行了比较。从重建的动态图像中,计算出脑部葡萄糖的葡萄糖代谢率(CMRglu)的参数图。我们的方法在体素级别显示了更好的重建。

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