Retrospective correction of motion-affected MR images using deep learning frameworks.
Thomas KüstnerKarim ArmaniousJiahuan YangBin YangFritz SchickSergios GatidisPublished in: Magnetic resonance in medicine (2019)
Deep learning-based retrospective restoration of motion artifacts is feasible resulting in near-realistic motion-free images. However, the image translation task can alter or hide anatomical features and, therefore, the clinical applicability of this technique has to be evaluated in future studies.