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Distortion-corrected image reconstruction with deep learning on an MRI-Linac.
Shan, Shanshan; Gao, Yang; Liu, Paul Z Y; Whelan, Brendan; Sun, Hongfu; Dong, Bin; Liu, Feng; Waddington, David E J.
Afiliação
  • Shan S; ACRF Image X Institute, Sydney School of Health Sciences, Faculty of Medicine and Health, The University of Sydney, Sydney, New South Wales, Australia.
  • Gao Y; State Key Laboratory of Radiation Medicine and Protection, School for Radiological and Interdisciplinary Sciences (RAD-X), Collaborative Innovation Center of Radiation Medicine of Jiangsu Higher Education Institutions, Soochow University, Suzhou, Jiangsu, China.
  • Liu PZY; Department of Medical Physics, Ingham Institute of Applied Medical Research, Liverpool, New South Wales, Australia.
  • Whelan B; School of Information Technology and Electrical Engineering, The University of Queensland, Brisbane, Queensland, Australia.
  • Sun H; School of Information Technology and Electrical Engineering, The University of Queensland, Brisbane, Queensland, Australia.
  • Dong B; School of Computer Science and Engineering, Central South University, Changsha, Hunan, China.
  • Liu F; ACRF Image X Institute, Sydney School of Health Sciences, Faculty of Medicine and Health, The University of Sydney, Sydney, New South Wales, Australia.
  • Waddington DEJ; Department of Medical Physics, Ingham Institute of Applied Medical Research, Liverpool, New South Wales, Australia.
Magn Reson Med ; 90(3): 963-977, 2023 09.
Article em En | MEDLINE | ID: mdl-37125656
ABSTRACT

PURPOSE:

MRI is increasingly utilized for image-guided radiotherapy due to its outstanding soft-tissue contrast and lack of ionizing radiation. However, geometric distortions caused by gradient nonlinearities (GNLs) limit anatomical accuracy, potentially compromising the quality of tumor treatments. In addition, slow MR acquisition and reconstruction limit the potential for effective image guidance. Here, we demonstrate a deep learning-based method that rapidly reconstructs distortion-corrected images from raw k-space data for MR-guided radiotherapy applications.

METHODS:

We leverage recent advances in interpretable unrolling networks to develop a Distortion-Corrected Reconstruction Network (DCReconNet) that applies convolutional neural networks (CNNs) to learn effective regularizations and nonuniform fast Fourier transforms for GNL-encoding. DCReconNet was trained on a public MR brain dataset from 11 healthy volunteers for fully sampled and accelerated techniques, including parallel imaging (PI) and compressed sensing (CS). The performance of DCReconNet was tested on phantom, brain, pelvis, and lung images acquired on a 1.0T MRI-Linac. The DCReconNet, CS-, PI-and UNet-based reconstructed image quality was measured by structural similarity (SSIM) and RMS error (RMSE) for numerical comparisons. The computation time and residual distortion for each method were also reported.

RESULTS:

Imaging results demonstrated that DCReconNet better preserves image structures compared to CS- and PI-based reconstruction methods. DCReconNet resulted in the highest SSIM (0.95 median value) and lowest RMSE (<0.04) on simulated brain images with four times acceleration. DCReconNet is over 10-times faster than iterative, regularized reconstruction methods.

CONCLUSIONS:

DCReconNet provides fast and geometrically accurate image reconstruction and has the potential for MRI-guided radiotherapy applications.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Radioterapia Guiada por Imagem / Aprendizado Profundo Tipo de estudo: Guideline Limite: Humans Idioma: En Revista: Magn Reson Med Assunto da revista: DIAGNOSTICO POR IMAGEM Ano de publicação: 2023 Tipo de documento: Article País de afiliação: Austrália

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Radioterapia Guiada por Imagem / Aprendizado Profundo Tipo de estudo: Guideline Limite: Humans Idioma: En Revista: Magn Reson Med Assunto da revista: DIAGNOSTICO POR IMAGEM Ano de publicação: 2023 Tipo de documento: Article País de afiliação: Austrália