[Translated article] Artificial intelligence in dermatology: A threat or an opportunity?

Actas Dermo-Sifiliográficas - Tập 113 - Trang T30-T46 - 2022
A. Martorell1, A. Martin-Gorgojo2, E. Ríos-Viñuela3, J.M. Rueda-Carnero1, F. Alfageme4, R. Taberner5
1Servicio de Dermatología, Hospital de Manises, Manises, Valencia, Spain
2Servicio de ITS/Dermatología, Sección de Especialidades Médicas. Ayuntamiento de Madrid, Madrid, Spain
3Servicio de Dermatologia, Fundación Instituto Valenciano de Oncología, Valencia, Spain
4Servicio de Dermatología, Hospital Puerta de Hierro, Madrid, Spain
5Departamento de Dermatología, Hospital Universitari Son Llàtzer, Palma de Mallorca, Spain

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