La inteligencia artificial en el diagnóstico por imagen cardiaca: un camino lleno de retos, desafíos y trampas

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https://doi.org/10.37615/retic.v6n3a1

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2023-12-30

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1.
García Fernández M Ángel. La inteligencia artificial en el diagnóstico por imagen cardiaca: un camino lleno de retos, desafíos y trampas. Rev Ecocar Pract (RETIC) [Internet]. 30 de diciembre de 2023 [citado 16 de abril de 2024];6(3):I-IV. Disponible en: https://imagenretic.org/RevEcocarPract/article/view/636

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