Quantitative
T1/T2 mapping provides important cardiovascular prognostic value. Conventional dictionary-matching
based methods are time consuming for cardiac T1/T2 mapping as the dictionary
need to be generated on-line. In this work, we propose to use machine learning
algorithms for faster T1/T2 prediction. Bloch equation simulation was used to
generate training data. The XGBoost and DNN models were evaluated and compared
based on simulation, phantom and in vivo studies. Results demonstrated that
using the machine learning approach can generate cardiac T1 and T2 maps much
faster while generating similar T1 and T2 values compared to the conventional
dictionary-matching approach.
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