Yurt, MahmutDalmaz, OnatDar, SalmanÖzbey, MuzafferTınaz, BerkOğuz, KaderÇukur, Tolga2023-02-162023-02-162022-08-160278-0062http://hdl.handle.net/11693/111406Learning-based translation between MRI contrasts involves supervised deep models trained using high-quality source- and target-contrast images derived from fully-sampled acquisitions, which might be difficult to collect under limitations on scan costs or time. To facilitate curation of training sets, here we introduce the first semi-supervised model for MRI contrast translation (ssGAN) that can be trained directly using undersampled k-space data. To enable semi-supervised learning on undersampled data, ssGAN introduces novel multi-coil losses in image, k-space, and adversarial domains. The multi-coil losses are selectively enforced on acquired k-space samples unlike traditional losses in single-coil synthesis models. Comprehensive experiments on retrospectively undersampled multi-contrast brain MRI datasets are provided. Our results demonstrate that ssGAN yields on par performance to a supervised model, while outperforming single-coil models trained on coil-combined magnitude images. It also outperforms cascaded reconstruction-synthesis models where a supervised synthesis model is trained following self-supervised reconstruction of undersampled data. Thus, ssGAN holds great promise to improve the feasibility of learning-based multi-contrast MRI synthesis.EnglishMagnetic resonance imagingImage synthesisSemi-supervisedAdversarialUndersampledSemi-supervised learning of MRI synthesis without fully-sampled ground truthsArticle10.1109/TMI.2022.31991551558-254X