Literature DB >> 35667374

Real-time MRI motion estimation through an unsupervised k-space-driven deformable registration network (KS-RegNet).

Hua-Chieh Shao1, Tian Li2, Michael J Dohopolski1, Jing Wang1, Jing Cai2, Jun Tan1, Kai Wang1, You Zhang1.   

Abstract

Purpose. Real-time three-dimensional (3D) magnetic resonance (MR) imaging is challenging because of slow MR signal acquisition, leading to highly under-sampled k-space data. Here, we proposed a deep learning-based, k-space-driven deformable registration network (KS-RegNet) for real-time 3D MR imaging. By incorporating prior information, KS-RegNet performs a deformable image registration between a fully-sampled prior image and on-board images acquired from highly-under-sampled k-space data, to generate high-quality on-board images for real-time motion tracking.Methods. KS-RegNet is an end-to-end, unsupervised network consisting of an input data generation block, a subsequent U-Net core block, and following operations to compute data fidelity and regularization losses. The input data involved a fully-sampled, complex-valued prior image, and the k-space data of an on-board, real-time MR image (MRI). From the k-space data, under-sampled real-time MRI was reconstructed by the data generation block to input into the U-Net core. In addition, to train the U-Net core to learn the under-sampling artifacts, the k-space data of the prior image was intentionally under-sampled using the same readout trajectory as the real-time MRI, and reconstructed to serve an additional input. The U-Net core predicted a deformation vector field that deforms the prior MRI to on-board real-time MRI. To avoid adverse effects of quantifying image similarity on the artifacts-ridden images, the data fidelity loss of deformation was evaluated directly in k-space.Results. Compared with Elastix and other deep learning network architectures, KS-RegNet demonstrated better and more stable performance. The average (±s.d.) DICE coefficients of KS-RegNet on a cardiac dataset for the 5- , 9- , and 13-spoke k-space acquisitions were 0.884 ± 0.025, 0.889 ± 0.024, and 0.894 ± 0.022, respectively; and the corresponding average (±s.d.) center-of-mass errors (COMEs) were 1.21 ± 1.09, 1.29 ± 1.22, and 1.01 ± 0.86 mm, respectively. KS-RegNet also provided the best performance on an abdominal dataset.Conclusion. KS-RegNet allows real-time MRI generation with sub-second latency. It enables potential real-time MR-guided soft tissue tracking, tumor localization, and radiotherapy plan adaptation.
© 2022 Institute of Physics and Engineering in Medicine.

Entities:  

Keywords:  MR-guided radiotherapy; U-Net; deep learning; deformable image registration; motion estimation; real-time MRI

Mesh:

Year:  2022        PMID: 35667374      PMCID: PMC9309029          DOI: 10.1088/1361-6560/ac762c

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   4.174


  79 in total

1.  SENSE: sensitivity encoding for fast MRI.

Authors:  K P Pruessmann; M Weiger; M B Scheidegger; P Boesiger
Journal:  Magn Reson Med       Date:  1999-11       Impact factor: 4.668

2.  elastix: a toolbox for intensity-based medical image registration.

Authors:  Stefan Klein; Marius Staring; Keelin Murphy; Max A Viergever; Josien P W Pluim
Journal:  IEEE Trans Med Imaging       Date:  2009-11-17       Impact factor: 10.048

Review 3.  The future of image-guided radiotherapy will be MR guided.

Authors:  Julianne M Pollard; Zhifei Wen; Ramaswamy Sadagopan; Jihong Wang; Geoffrey S Ibbott
Journal:  Br J Radiol       Date:  2017-03-29       Impact factor: 3.039

4.  Magnetic Resonance Image-Guided Radiotherapy (MRIgRT): A 4.5-Year Clinical Experience.

Authors:  L E Henke; J A Contreras; O L Green; B Cai; H Kim; M C Roach; J R Olsen; B Fischer-Valuck; D F Mullen; R Kashani; M A Thomas; J Huang; I Zoberi; D Yang; V Rodriguez; J D Bradley; C G Robinson; P Parikh; S Mutic; J Michalski
Journal:  Clin Oncol (R Coll Radiol)       Date:  2018-09-07       Impact factor: 4.126

Review 5.  Compressed sensing for body MRI.

Authors:  Li Feng; Thomas Benkert; Kai Tobias Block; Daniel K Sodickson; Ricardo Otazo; Hersh Chandarana
Journal:  J Magn Reson Imaging       Date:  2016-12-16       Impact factor: 4.813

6.  Image Reconstruction: From Sparsity to Data-adaptive Methods and Machine Learning.

Authors:  Saiprasad Ravishankar; Jong Chul Ye; Jeffrey A Fessler
Journal:  Proc IEEE Inst Electr Electron Eng       Date:  2019-09-19       Impact factor: 10.961

7.  Learning a variational network for reconstruction of accelerated MRI data.

Authors:  Kerstin Hammernik; Teresa Klatzer; Erich Kobler; Michael P Recht; Daniel K Sodickson; Thomas Pock; Florian Knoll
Journal:  Magn Reson Med       Date:  2017-11-08       Impact factor: 4.668

8.  Accelerating cardiac cine MRI using a deep learning-based ESPIRiT reconstruction.

Authors:  Christopher M Sandino; Peng Lai; Shreyas S Vasanawala; Joseph Y Cheng
Journal:  Magn Reson Med       Date:  2020-07-22       Impact factor: 4.668

9.  An unsupervised 2D-3D deformable registration network (2D3D-RegNet) for cone-beam CT estimation.

Authors:  You Zhang
Journal:  Phys Med Biol       Date:  2021-03-24       Impact factor: 4.174

Review 10.  MR-guidance in clinical reality: current treatment challenges and future perspectives.

Authors:  S Corradini; F Alongi; N Andratschke; C Belka; L Boldrini; F Cellini; J Debus; M Guckenberger; J Hörner-Rieber; F J Lagerwaard; R Mazzola; M A Palacios; M E P Philippens; C P J Raaijmakers; C H J Terhaard; V Valentini; M Niyazi
Journal:  Radiat Oncol       Date:  2019-06-03       Impact factor: 3.481

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.