Despite the great potential of quantitative Magnetic Resonance Imaging (MRI) for comprehensive tissue characterization, the generally long acquisition times hamper a broad clinical deployment. This dissertation aims at developing Deep Learning methods for fast and robust multiparametric MRI to meet the key clinical needs for image-based biomarkers. The proposed methodological advances for multiparametric mapping via transient-state imaging techniques are validated, and initial clinical experience is demonstrated.
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Despite the great potential of quantitative Magnetic Resonance Imaging (MRI) for comprehensive tissue characterization, the generally long acquisition times hamper a broad clinical deployment. This dissertation aims at developing Deep Learning methods for fast and robust multiparametric MRI to meet the key clinical needs for image-based biomarkers. The proposed methodological advances for multiparametric mapping via transient-state imaging techniques are validated, and initial clinical experienc...
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