Emerging Technologies in Education: A Bibliometric Analysis of Artificial Intelligence and its Applications in Health Sciences.

Authors

  • Rolando Eslava Zapata 1Universidad Libre Colombia Seccional Cúcuta, Facultad de Ciencias Económicas, Administrativas y Contables. Cúcuta, Colombia Author
  • Edixon Chacón Guerrero Universidad de Los Andes, Departamento de Evaluación y Estadística. San Cristóbal, Venezuela Author
  • Rómulo Esteban Montilla St. Mary’s University, Department of Counseling and Human Services. San Antonio, Texas, Estados Unidos de América Author

DOI:

https://doi.org/10.56294/mw202449

Keywords:

Emerging Technologies, Education, Bibliometric Analysis, Artificial Intelligence, Health Sciences

Abstract

Artificial Intelligence brings a new paradigm in health sciences related to using technologies capable of processing a large amount of patient information to strengthen prediction, prevention and clinical care. This research aimed to perform a bibliometric analysis of Artificial Intelligence and its applications in Health Sciences, particularly on Emerging Technologies in Education. To this end, a search for articles related to "Artificial Intelligence and its Applications in Health Sciences" was conducted at the international level in the Scopus database with search parameters based on titles, abstracts and keywords. The results revealed that the network of the 100 most essential terms was grouped into four clusters, namely: the first cluster identified with red color is related to artificial Intelligence; the second cluster identified with green color is related to the controlled study; the third cluster identified with yellow color is related to algorithm and, the fourth cluster identified with yellow color is related to education. It was concluded that artificial Intelligence has experienced advances that are having an impact on health sciences education. Academics and researchers have tools that allow them to obtain information to deepen the diagnosis of diseases and present students with robust case studies that strengthen the teaching-learning process

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Published

2024-02-21

How to Cite

1.
Zapata RE, Guerrero EC, Montilla RE. Emerging Technologies in Education: A Bibliometric Analysis of Artificial Intelligence and its Applications in Health Sciences. Seminars in Medical Writing and Education [Internet]. 2024 Feb. 21 [cited 2025 May 21];3:49. Available from: https://mw.ageditor.ar/index.php/mw/article/view/60