Improving bSSFP-based quantitative magnetization transfer imaging with MR physics-informed artificial neural network

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Most quantitative magnetization transfer imaging (qMT) protocols require additional T1 mapping scan. A recent on-resonance multiple phase-cycle bSSFP method was proposed for qMT that obviates the necessity for T1 mapping, but the fitting results were suboptimal. In this study, we proposed a physics-informed artificial neural network (ANN) to improve the fitting of this method. By using the MR signal model to generate the training data and regularize the network, no in-vivo data acquisition was necessary. Experiments on digital phantom and in-vivo data demonstrated improvement over previous method and better resilience against measurement noise.
Publisher
International Society for Magnetic Resonance in Medicine
Issue Date
2023-06-07
Language
English
Citation

2023 ISMRM & ISMRT Annual Meeting & Exhibition , pp.912

URI
http://hdl.handle.net/10203/316962
Appears in Collection
BiS-Conference Papers(학술회의논문)
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