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Sparsity-based PET image reconstruction using MRI learned dictionaries

机译:使用MRI学习词典的基于稀疏性的PET图像重建

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Incorporating anatomical information obtained by magnetic resonance (MR) imaging has shown its promises to improve the positron emission tomography (PET) imaging quality. In this paper, we propose a novel maximum a posteriori (MAP) PET image reconstruction technique using a sparse prior whose dictionary is learned from the corresponding MR images. Specifically, a PET image is divided into three-dimensional overlapping patches which are expected to be sparsely represented over a redundant dictionary. With the assumption that the PET and MR images of a patient can be sparsified under a common dictionary, the dictionary is learned from the MR image to involve anatomical measurement in PET image reconstruction. The PET image and its sparse representation are updated alternately in the iterative reconstruction process. We evaluated the performance of the proposed method quantitatively, using a realistic simulation with the BrainWeb database phantoms. Noticeable improvement on the noise versus bias tradeoff has been demonstrated in images reconstructed from the proposed method, compared to that from the conventional smoothness MAP method.
机译:结合通过磁共振(MR)成像获得的解剖学信息显示出其有望改善正电子发射断层扫描(PET)成像质量的希望。在本文中,我们提出了一种使用稀疏先验的新颖的最大后验(MAP)PET图像重建技术,该稀疏先验的字典是从相应的MR图像中学习的。具体地说,将PET图像划分为三维重叠的小块,这些小块有望在冗余字典上稀疏地表示。假设可以在通用词典下稀疏患者的PET和MR图像,则从MR图像中学习该词典,以在PET图像重建中涉及解剖学测量。在迭代重建过程中,将交替更新PET图像及其稀疏表示。我们使用带有BrainWeb数据库体模的逼真的模拟,定量评估了所提出方法的性能。与传统的平滑度MAP方法相比,从建议的方法重建的图像中已经证明了噪声与偏置权衡的显着改善。

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