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Real-time radial reconstruction with domain transform manifold learning for MRI-guided radiotherapy.

Authors :
Waddington, David E. J.
Hindley, Nicholas
Koonjoo, Neha
Chiu, Christopher
Reynolds, Tess
Liu, Paul Z. Y.
Bo Zhu
Bhutto, Danyal
Paganelli, Chiara
Keall, Paul J.
Rosen, Matthew S.
Source :
Medical Physics; Apr2023, Vol. 50 Issue 4, p1962-1974, 13p
Publication Year :
2023

Abstract

Background: MRI-guidance techniques that dynamically adapt radiation beams to follow tumor motion in real time will lead to more accurate cancer treatments and reduced collateral healthy tissue damage.The gold-standard for reconstruction of undersampled MR data is compressed sensing (CS) which is computationally slow and limits the rate that images can be available for real-time adaptation. Purpose: Once trained, neural networks can be used to accurately reconstruct raw MRI data with minimal latency.Here,we test the suitability of deep-learningbased image reconstruction for real-time tracking applications on MRI-Linacs. Methods: We use automated transform by manifold approximation (AUTOMAP), a generalized framework that maps raw MR signal to the target image domain, to rapidly reconstruct images from undersampled radial k-space data. The AUTOMAP neural network was trained to reconstruct images from a golden-angle radial acquisition, a benchmark for motion-sensitive imaging, on lung cancer patient data and generic images from ImageNet. Model training was subsequently augmented with motion-encoded k-space data derived from videos in the YouTube-8M dataset to encourage motion robust reconstruction. Results: AUTOMAP models fine-tuned on retrospectively acquired lung cancer patient data reconstructed radial k-space with equivalent accuracy to CS but with much shorter processing times. Validation of motion-trained models with a virtual dynamic lung tumor phantom showed that the generalized motion properties learned from YouTube lead to improved target tracking accuracy. Conclusion: AUTOMAP can achieve real-time, accurate reconstruction of radial data. These findings imply that neural-network-based reconstruction is potentially superior to alternative approaches for real-time image guidance applications. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00942405
Volume :
50
Issue :
4
Database :
Complementary Index
Journal :
Medical Physics
Publication Type :
Academic Journal
Accession number :
163814578
Full Text :
https://doi.org/10.1002/mp.16224