Inteligencia artificial en la detección de pólipos colónicos: qué dicen los estudios

Autores/as

  • Ricardo Aníbal Cepeda Vásquez Clínica del Country

DOI:

https://doi.org/10.22516/25007440.726

Palabras clave:

POLIPOS, inteligencia, inteligencia artificial

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Biografía del autor/a

Ricardo Aníbal Cepeda Vásquez, Clínica del Country

Médico Cirujano, Especialista en Medicina Interna de la Universidad Javeriana y Especialista en Gastroenterología de la Universidad Militar. Gastroenterólogo, Clínica del Country. Bogotá, Colombia

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Publicado

2021-03-08

Cómo citar

Cepeda Vásquez, R. A. (2021). Inteligencia artificial en la detección de pólipos colónicos: qué dicen los estudios. Revista Colombiana De Gastroenterología, 36(1), 2–6. https://doi.org/10.22516/25007440.726

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