Undersampling in free-breathing stack-of-radial MRI is desirable to shorten the scan time but introduces streaking artifacts. Deep learning has shown an excellent performance in removing image artifacts. We developed a 3D residual generative adversarial network (3D-GAN) to remove streaking artifacts caused by radial undersampling. We trained and tested the network using paired images that were undersampled with acceleration factors of 3.1x to 6.3x and fully-sampled from single echo and multi-echo acquisitions. We demonstrate the feasibility of the network with 3.1x to 6.3x acceleration factors and 6 different echo times.
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