In-vivo high-resolution \chi-separation at 7T
Jiye Kim, Minjun Kim, Sooyeon Ji, Kyeongseon Min, Hwihun Jeong,, Hyeong-Geol Shin, Chungseok Oh, Sina Straub, Seong-Gi Kim, and Jongho Lee

TL;DR
This paper introduces a novel deep learning pipeline for high-resolution hi-separation mapping at 7T MRI, enabling detailed brain iron and myelin analysis with improved accuracy and contrast over existing methods.
Contribution
The study develops R2PRIMEnet7T, a deep neural network that converts 7T R2* maps into R2' maps, facilitating hi-separation at 7T with enhanced resolution and accuracy.
Findings
7T hi-separation maps show similar contrast to 3T but with higher resolution.
The proposed method outperforms alternative pipelines in accuracy and detail.
High-resolution maps enable better delineation of brain structures related to iron and myelin.
Abstract
A recently introduced quantitative susceptibility mapping (QSM) technique, -separation, offers the capability to separate paramagnetic () and diamagnetic () susceptibility distribution within the brain. In-vivo high-resolution mapping of iron and myelin distribution, estimated by -separation, could provide a deeper understanding of brain substructures, assisting the investigation of their functions and alterations. This can be achieved using 7T MRI, which benefits from a high signal-to-noise ratio and susceptibility effects. However, applying -separation at 7T presents difficulties due to the requirement of an map, coupled with issues such as high specific absorption rate (SAR), large transmit field inhomogeneities, and prolonged scan time. To address these challenges, we developed a novel deep neural network,…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Imaging Techniques and Applications · Radiation Therapy and Dosimetry
