MOCOnet: robust motion correction of cardiovascular magnetic resonance T1 mapping using convolutional neural networks
<br><strong>Background: </strong>Quantitative cardiovascular magnetic resonance (CMR) T1 mapping has shown promise for advanced tissue characterisation in routine clinical practise. However, T1 mapping is prone to motion artefacts, which affects its robustness and clinical interpre...
Main Authors: | Gonzales, RA, Zhang, Q, Papież, BW, Werys, K, Lukaschuk, E, Popescu, IA, Burrage, MK, Shanmuganathan, M, Ferreira, VM, Piechnik, SK |
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Format: | Journal article |
Language: | English |
Published: |
Frontiers Media
2021
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