Effects of software on myocardial T1 measurements: a 3 T multicentre single vendor phantom study
Main Authors: | Atkinson, D, Popescu, I, Thomas, KE, Yun, C-H, Werys, K, Burrage, MK, Greenwood, JP, Raman, B, Gonzales, RA, Kim, YJ, Sanchez Panchuelo, RM, Davies, NP, Chow, K, Neubauer, S, Piechnik, SK, Ferreira, VM |
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Format: | Conference item |
Language: | English |
Published: |
Society for Cardiovascular Magnetic Resonance
2024
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