This work presents a parallel imaging reconstruction framework based on deep neural networks. A conditional generative adversarial network (conditional GAN) is used to learn how to recover anatomical image structure from undersampled data for imaging acceleration. The new approach is shown to be suitable for image reconstruction with high undersampling factors when conventional parallel imaging suffers from a g-factor increase.
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