4.6 Article

Material Decomposition in Spectral CT Using Deep Learning: A Sim2Real Transfer Approach

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 25632-25647

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3056150

Keywords

Computed tomography; Image reconstruction; Photonics; Phantoms; Detectors; Task analysis; Licenses; Spectral CT; inverse problem; deep learning; transfer learning

Funding

  1. European Union [701915, 668142]
  2. LabEx PRIMES of the University de Lyon [ANR-11-LABX-0063]
  3. ANR project SALTO [ANR-17-CE19-0011-01]
  4. France Life Imaging from the French Investissements d'Avenir [ANR-11-INBS-0006]
  5. Academy of Finland Project (Finnish Centre of Excellence in Inverse Modelling and Imaging) [312123]
  6. EPSRC [EP/N022750/1, EP/T000864/1]
  7. EPSRC [EP/N022750/1, EP/T000864/1] Funding Source: UKRI
  8. Marie Curie Actions (MSCA) [701915] Funding Source: Marie Curie Actions (MSCA)

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A deep learning strategy based on U-Net architecture and Sim2Real transfer learning approach is proposed to solve the nonlinear material decomposition problem in spectral computed tomography. Synthetic data must be realistic and representative for this approach to work, and the proposed method is compared to a regularized Gauss-Newton method.
The state-of-the art for solving the nonlinear material decomposition problem in spectral computed tomography is based on variational methods, but these are computationally slow and critically depend on the particular choice of the regularization functional. Convolutional neural networks have been proposed for addressing these issues. However, learning algorithms require large amounts of experimental data sets. We propose a deep learning strategy for solving the material decomposition problem based on a U-Net architecture and a Sim2Real transfer learning approach where the knowledge that we learn from synthetic data is transferred to a real-world scenario. In order for this approach to work, synthetic data must be realistic and representative of the experimental data. For this purpose, numerical phantoms are generated from human CT volumes of the KiTS19 Challenge dataset, segmented into specific materials (soft tissue and bone). These volumes are projected into sinogram space in order to simulate photon counting data, taking into account the energy response of the scanner. We compared projection- and image-based decomposition approaches where the network is trained to decompose the materials either in the projection or in the image domain. The proposed Sim2Real transfer strategies are compared to a regularized Gauss-Newton (RGN) method on synthetic data, experimental phantom data and human thorax data.

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