Model-informed machine learning for multi-component T2 relaxometry
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Jean-Philippe Thiran | Thomas Yu | Cristina Granziera | Tobias Kober | Erick Jorge Canales-Rodríguez | Marco Pizzolato | Meritxell Bach Cuadra | Muhamed Barakovic | Matthias Weigel | Gian Franco Piredda | Tom Hilbert | Elda Fischi-Gomez | J. Thiran | C. Granziera | M. Weigel | T. Hilbert | T. Kober | E. Fischi-Gomez | M. Bach Cuadra | M. Pizzolato | G. Piredda | Thomas Yu | M. Barakovic | E. Fischi-Gómez
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