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      Iterative PET Image Reconstruction Using Convolutional Neural Network Representation

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          Abstract

          PET image reconstruction is challenging due to the ill-poseness of the inverse problem and limited number of detected photons. Recently, the deep neural networks have been widely and successfully used in computer vision tasks and attracted growing interests in medical imaging. In this paper, we trained a deep residual convolutional neural network to improve PET image quality by using the existing inter-patient information. An innovative feature of the proposed method is that we embed the neural network in the iterative reconstruction framework for image representation, rather than using it as a post-processing tool. We formulate the objective function as a constrained optimization problem and solve it using the alternating direction method of multipliers algorithm. Both simulation data and hybrid real data are used to evaluate the proposed method. Quantification results show that our proposed iterative neural network method can outperform the neural network denoising and conventional penalized maximum likelihood methods.

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          Author and article information

          Journal
          IEEE Transactions on Medical Imaging
          IEEE Trans. Med. Imaging
          Institute of Electrical and Electronics Engineers (IEEE)
          0278-0062
          1558-254X
          2018
          : 1
          Article
          10.1109/TMI.2018.2869871
          6472985
          30222554
          b5b2a0e0-7444-4c0f-ba92-f81027b44a11
          © 2018
          History

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