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1Academic Journal
المؤلفون: Cañaveral, Sara, Mera-Banguero, Carlos, Fonnegra, Rubén D.
المصدر: TecnoLógicas; Vol. 27 No. 60 (2024); e3052 ; TecnoLógicas; Vol. 27 Núm. 60 (2024); e3052 ; 2256-5337 ; 0123-7799
مصطلحات موضوعية: Cáncer de mama, imagen médica, resonancia magnética, generación de imagen postcontraste, aprendizaje profundo, Breast cancer, diagnostic imaging, magnetic resonance imaging, postcontrast image generation, deep learning
وصف الملف: application/pdf
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