Machine Learning in health sciences: Uses and applications
Machine Learning en ciencias de la salud: Usos y aplicaciones
DOI:
https://doi.org/10.22258/hgh.2022.62.119Abstract
The vast amount of information generated across different databases in the present day has enabled advances in various fields of science, not only in health but also in political science and the biological sciences. While these developments contribute to scientific training and a more comprehensive understanding of knowledge, they also support more optimal decision-making.Downloads
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Copyright (c) 2022 Juan Santiago Serna - Trejos, Esteban Agudelo - Quintero, Stefanya Geraldine Bermudez - Moyano

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