MANTIS: Model-Augmented Neural neTwork with Incoherent k-space Sampling for efficient MR T2 mapping
Fang Liu, Li Feng, Richard Kijowski

TL;DR
MANTIS is a deep learning framework that combines CNNs, physical models, and incoherent k-space sampling to enable fast and accurate MR T2 mapping from undersampled data.
Contribution
This work introduces MANTIS, a novel deep learning-based reconstruction method integrating model-based data consistency and incoherent sampling for efficient MR parameter mapping.
Findings
Lower errors in T2 estimation compared to traditional methods
Higher similarity to reference T2 maps
Effective for knee joint T2 mapping
Abstract
Quantitative mapping of magnetic resonance (MR) parameters have been shown as valuable methods for improved assessment of a range of diseases. Due to the need to image an anatomic structure multiple times, parameter mapping usually requires long scan times compared to conventional static imaging. Therefore, accelerated parameter mapping is highly-desirable and remains a topic of great interest in the MR research community. While many recent deep learning methods have focused on highly efficient image reconstruction for conventional static MR imaging, applications of deep learning for dynamic imaging and in particular accelerated parameter mapping have been limited. The purpose of this work was to develop and evaluate a novel deep learning-based reconstruction framework called Model-Augmented Neural neTwork with Incoherent k-space Sampling (MANTIS) for efficient MR parameter mapping. Our…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Imaging Techniques and Applications · Cardiac Imaging and Diagnostics
