Standardized image post-processing of cardiovascular magnetic resonance T1-mapping reduces variability and improves accuracy and consistency in myocardial tissue characterization.
Int J Cardiol
; 298: 128-134, 2020 01 01.
Article
en En
| MEDLINE
| ID: mdl-31500864
BACKGROUND: 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 standardize T1-map analysis by human operators to improve accuracy and consistency. METHODS: We developed a multi-step training program for T1-map post-processing. The training dataset contained 42 left ventricular (LV) short-axis T1-maps (normal and diseases; 1.5 and 3 Tesla). Contours drawn by two experienced human operators served as reference for myocardial T1 and wall thickness (WT). Trainees (nâ¯=â¯26) underwent training and were evaluated by: (a) qualitative review of contours; (b) quantitative comparison with reference T1 and WT. RESULTS: The mean absolute difference between reference operators was 8.4⯱â¯6.3â¯ms (T1) and 1.2⯱â¯0.7â¯pixels (WT). Trainees' mean discrepancy from reference in T1 improved significantly post-training (from 8.1⯱â¯2.4 to 6.7⯱â¯1.4â¯ms; pâ¯<â¯0.001), with a 43% reduction in standard deviation (SD) (pâ¯=â¯0.035). WT also improved significantly post-training (from 0.9⯱â¯0.4 to 0.7⯱â¯0.2â¯pixels, pâ¯=â¯0.036), with 47% reduction in SD (pâ¯=â¯0.04). These experimentally-derived thresholds served to guide the training process: T1 (±8â¯ms) and WT (±1â¯pixel) from reference. CONCLUSION: A standardized approach to CMR T1-map image post-processing leads to significant improvements in the accuracy and consistency of LV myocardial T1 values and wall thickness. Improving consistency between operators can translate into 33-72% reduction in clinical trial sample-sizes. This work may: (a) serve as a basis for re-certification for core-lab operators; (b) translate to sample-size reductions for clinical studies; (c) produce better-quality training datasets for machine learning.
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1
Base de datos:
MEDLINE
Asunto principal:
Enfermedades Cardiovasculares
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Competencia Clínica
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Imagen por Resonancia Cinemagnética
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Miocardio
Tipo de estudio:
Qualitative_research
Límite:
Humans
Idioma:
En
Revista:
Int J Cardiol
Año:
2020
Tipo del documento:
Article