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A deep learning method for high-quality ultra-fast CT image reconstruction from sparsely sampled projections

Khodajou Chokami, H ; Sharif University of Technology | 2022

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  1. Type of Document: Article
  2. DOI: 10.1016/j.nima.2022.166428
  3. Publisher: Elsevier B.V , 2022
  4. Abstract:
  5. Few-view or sparse-view computed tomography has been recently introduced as a great potential to speed up data acquisition and alleviate the amount of patient radiation dose. This study aims to present a method for high-quality ultra-fast image reconstruction from sparsely sampled projections to overcome problems of previous methods, missing and blurring tissue boundaries, low-contrast objects, variations in shape and texture between the images of different individuals, and their outcomes. To this end, a new deep learning (DL) framework based on convolution neural network (CNN) models is proposed to solve the problem of CT reconstruction under sparsely sampled data, named the multi-receptive field densely connected CNN (MRDC-CNN). MRDC-CNN benefits from an encoder–decoder structure by proposing dense skip connections to recover the missing information, multi-receptive field modules to enlarge the receptive field, and having no batch normalization layers to boost the performance. The MRDC-CNN with a hybrid loss function format introduces several auxiliary losses combined with the main loss to accelerate convergence rate and alleviate the gradient vanishing problem during network training and maximize its performance. Results have shown that MRDC-CNN is 4–6times faster than the state-of-the-art methods, with fewer memory requirements, better performance in objective quality evaluations, and improved visual quality. The results indicated the superiority of our proposed method compared to the latest algorithms. In conclusion, the proposed method could lead to high-quality CT imaging with quicker imaging speed and lower radiation dose. The source code is available on a GitHub repository at this link. © 2022 Elsevier B.V
  6. Keywords:
  7. Computed tomography ; Few-view CT ; Image reconstruction ; Data acquisition ; Textures ; Convolution neural network ; CT Image ; Deep learning ; High quality ; Images reconstruction ; Learning methods ; Performance ; Receptive fields ; Ultra-fast ; Computerized tomography
  8. Source: Nuclear Instruments and Methods in Physics Research, Section A: Accelerators, Spectrometers, Detectors and Associated Equipment ; Volume 1029 , 2022 ; 01689002 (ISSN)
  9. URL: https://www.sciencedirect.com/science/article/abs/pii/S0168900222000729