Self-gated free-breathing multi-echo stack-of-radial MRI quantifies liver fat and R2*. However, data undersampling due to motion self-gating can degrade the image quality and quantification accuracy. Previous methods required either longer scan time or computationally expensive constrained reconstruction. In this work, a deep learning-based two-stage network was developed to suppress undersampling artifacts and rapidly generate quantitative fat and R2* maps with a pixel-wise uncertainty map. The proposed method achieved accurate fat and R2* mapping and reduced the computational time by two orders of magnitude versus constrained reconstruction. The uncertainty map can be used to detect regions with potential quantification errors.
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