Magnetisation transfer ratio (MTR) is a popular MR-modality for the identification of brain anomalies in multiple sclerosis due to its sensitivity to myelin changes. It however requires dedicated sequences with long acquisition times, which make its applicability in clinics less feasible. In this work, deep learning U-net architectures have been used to extract MTR information directly from routine qualitative images, bypassing the need for specialised acquisitions. Results show strong correlation with MTR and agreement between regional distributions in normal appearing tissues, both in healthy controls and multiple sclerosis patients.
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