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      LEARN: Learned Experts’ Assessment-Based Reconstruction Network for Sparse-Data CT

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          Abstract

          <p class="first" id="P1">Compressive sensing (CS) has proved effective for tomographic reconstruction from sparsely collected data or under-sampled measurements, which are practically important for few-view CT, tomosynthesis, interior tomography, and so on. To perform sparse-data CT, the iterative reconstruction commonly uses regularizers in the CS framework. Currently, how to choose the parameters adaptively for regularization is a major open problem. In this paper, inspired by the idea of machine learning especially deep learning, we unfold a state-of-the-art “fields of experts” based iterative reconstruction scheme up to a number of iterations for data-driven training, construct a Learned Experts’ Assessment-based Reconstruction Network (LEARN) for sparse-data CT, and demonstrate the feasibility and merits of our LEARN network. The experimental results with our proposed LEARN network produces a superior performance with the well-known Mayo Clinic Low-Dose Challenge Dataset relative to several state-of-the-art methods, in terms of artifact reduction, feature preservation, and computational speed. This is consistent to our insight that because all the regularization terms and parameters used in the iterative reconstruction are now learned from the training data, our LEARN network utilizes application-oriented knowledge more effectively and recovers underlying images more favorably than competing algorithms. Also, the number of layers in the LEARN network is only 50, reducing the computational complexity of typical iterative algorithms by orders of magnitude. </p>

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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
          June 2018
          June 2018
          : 37
          : 6
          : 1333-1347
          Article
          10.1109/TMI.2018.2805692
          b4e0e56d-d1f6-4571-924b-8753051b458e
          © 2018
          History

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