Standardized image post-processing of cardiovascular magnetic resonance T1-mapping reduces variability and improves accuracy and consistency in myocardial tissue characterization
<br><strong>Background: </strong>Myocardial T1-mapping is increasingly used in multicentre studies and trials. Inconsistent image analysis introduces variability, hinders differentiation of diseases, and results in larger sample sizes. We present a systematic approach to standardiz...
Hauptverfasser: | Carapella, V, Puchta, H, Lukaschuk, E, Marini, C, Werys, K, Neubauer, S, Ferreira, VM, Piechnik, SK |
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Format: | Journal article |
Sprache: | English |
Veröffentlicht: |
Elsevier
2019
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