Inteligencia artificial en ecocardiografía
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https://doi.org/10.37615/retic.v2n1a1Palabras clave:
machine learning, deep learning, inteligencia artificial.Resumen
Resumen de los principios y las aplicaciones de las técnicas de inteligencia artificial en Cardiologia
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Derechos de autor 2019 Miguel Ángel García Fernández, Antonio López Farré
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