One challenge for MR reconstruction is to heuristically select the appropriate regularizer for the optimization problem. This abstract proposes a novel deep learning based reconstruction approach for accelerated MR imaging. With the training using clinical MR images and their retrospectively undersampled noisy images, this algorithm learns the specific parameters of a general regularizer for the optimization problem, and uses this regularizer in the iterative reconstruction to achieves high image quality with high acceleration factors.
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