Multi-frequency MRE for elasticity quantitation and optimal tissue discrimination: a two-platform liver fibrosis mimicking phantom study
Fatiha Andoh, Jin Long Yue, Felicia Julea, Marion Tardieu, Camille, No\^us, Gwena\"el Pag\'e, Philippe Garteiser, Bernard van Beers, Xavier, Ma\^itre (BIOMAPS), Claire Pellot-barakat, Van Beers

TL;DR
This study demonstrates that multi-frequency MRE provides highly repeatable and reproducible measurements of tissue elasticity across different MRI platforms, with optimal tissue discrimination achieved under specific spatial sampling conditions.
Contribution
The paper introduces a two-platform MRE approach that maintains measurement robustness and enables accurate tissue discrimination for liver fibrosis mimicking phantoms, highlighting the importance of spatial sampling conditions.
Findings
High repeatability and reproducibility of MRE measurements across platforms.
MRE outcomes are robust to displacement amplitude variations.
Optimal discrimination of tissue phantoms when spatial sampling conditions are met.
Abstract
In the framework of algebraic inversion, Magnetic Resonance Elastography (MRE) repeatability, reproducibility and robustness were evaluated on extracted shear velocities (or elastic moduli). The same excitation system was implemented at two sites equipped with clinical MR scanners of 1.5 T and 3 T. A set of four elastic, isotropic, homogeneous calibrated phantoms of distinct elasticity representing the spectrum of liver fibrosis severity was mechanically characterized. The repeatability of the measurements and the reproducibility between the two platforms were found to be excellent with mean coefficients of variations of 1.62% for the shear velocity mean values and 1.95% for the associated standard deviations. MRE velocities were robust to the amplitude and pattern variations of the displacement field with virtually no difference between outcomes from both magnets at identical…
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