Texture analysis and machine learning to predict water T2 and fat fraction from non-quantitative MRI of thigh muscles in Facioscapulohumeral muscular dystrophy.
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S. Figini | N. Bergsland | Giulia Colelli | A. Pichiecchio | E. Ricci | X. Deligianni | M. Paoletti | G. Tasca | F. Santini | S. Bastianello | G. Germani | M. Monforte | Elena Ballante | P. Felisaz | Francesca Solazzo | Silvia Figini
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