MIMOSA: Multi-parametric Imaging using Multiple-echoes with Optimized Simultaneous Acquisition for highly-efficient quantitative MRI
Yuting Chen, Yohan Jun, Amir Heydari, Xingwang Yong, Jiye Kim, Jongho Lee, Huafeng Liu, Huihui Ye, Borjan Gagoski, Shohei Fujita, Berkin Bilgic

TL;DR
MIMOSA is a novel MRI sequence that enables rapid, multi-parameter quantitative imaging with high accuracy and efficiency, suitable for both 3T and 7T scanners, using optimized acquisition and advanced reconstruction techniques.
Contribution
The paper introduces MIMOSA, a new multi-parametric MRI sequence combining multiple echoes and optimized acquisition for fast, accurate quantitative mapping of various tissue parameters.
Findings
Achieved up to 11.8-fold acceleration without losing accuracy
Demonstrated high correlation with reference techniques in phantom and in-vivo tests
Produced high-resolution maps in minutes at 3T and 7T
Abstract
Purpose: To develop a new sequence, MIMOSA, for highly-efficient T1, T2, T2*, proton density (PD), and source separation quantitative susceptibility mapping (QSM). Methods: MIMOSA was developed based on 3D-quantification using an interleaved Look-Locker acquisition sequence with T2 preparation pulse (3D-QALAS) by combining 3D turbo Fast Low Angle Shot (FLASH) and multi-echo gradient echo acquisition modules with a spiral-like Cartesian trajectory to facilitate highly-efficient acquisition. Simulations were performed to optimize the sequence. Multi-contrast/-slice zero-shot self-supervised learning algorithm was employed for reconstruction. The accuracy of quantitative mapping was assessed by comparing MIMOSA with 3D-QALAS and reference techniques in both ISMRM/NIST phantom and in-vivo experiments. MIMOSA's acceleration capability was assessed at R = 3.3, 6.5, and 11.8 in in-vivo…
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