This study proposed a novel MAGnitude Image to Complex (MAGIC) Network to reconstruct images using deep learning with limited number of training data. Collecting complex multi-coil data is inconvenient since it is beyond the routine examination. However, there are many magnitude images available in hospitals. By applying deformation between the magnitude image and complex image, MAGIC Net succeeded in synthesizing deformed data for training and enabled deep learning methods. Results show that with the same original data, MAGIC-Net outperforms the conventional CG-SENSE in PSNR for all undersampling trajectories with high resolution b = 0 and b = 1000 s/mm2.
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