2020
DOI: 10.48550/arxiv.2007.10225
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Model-Informed Machine Learning for Multi-component T2 Relaxometry

Abstract: Recovering the T 2 distribution from multi-echo T 2 magnetic resonance (MR) signals is challenging but has high potential as it provides biomarkers characterizing the tissue micro-structure, such as the myelin water fraction (MWF). In this work, we propose to combine machine learning and aspects of parametric (fitting from the MRI signal using biophysical models) and non-parametric (model-free fitting of the T 2 distribution from the signal) approaches to T 2 relaxometry in brain tissue by using a multi-layer … Show more

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