Computer-Aided Detection and diagnosis for prostate cancer based on mono and multi-parametric MRI: A review
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Guillaume Lemaitre | Fabrice Mériaudeau | Robert Marti | Jordi Freixenet | Joan Carles Vilanova | Paul Michael Walker | R. Martí | F. Mériaudeau | J. Freixenet | J. Vilanova | P. Walker | G. Lemaître
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