Salud digital y Covid-19 en los países BRICS: análisis bibliométrico

Autores/as

  • Nadyelle Elias Santos Alencar Federal University of Piauí
  • Letícia Bastos Conrado State University of Ceará
  • Paulo Henrique Leal de Sousa Oswaldo Cruz Foundation
  • Amanda Luiza Marinho Feitosa Visconde de Sabóia Public Health School
  • Kelen Gomes Ribeiro Federal University of Ceará
  • Cláudia Alexandra da Cunha Pernencar NOVA University of Lisbon
  • Ivana Cristina de Holanda Cunha Barreto Oswaldo Cruz Foundation

DOI:

https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1369

Palabras clave:

Países en Desarrollo, Tecnología Biomédica, COVID-19

Resumen

Objetivo: analizar el estado del arte en cuanto a las soluciones de salud digital para hacer frente a la Covid-19 desarrolladas e implementadas por los países del BRICS. Método: análisis bibliométrico basado en una revisión de alcance realizada en las bases de datos Medline/Pubmed, Lilacs, Scopus y Web of Science en agosto de 2022. Resultados: se incluyeron 430 registros que presentaban soluciones digitales en uno de los países del BRICS, centrándose en la vigilancia, prevención/control o manejo clínico de la Covid-19. China e India, junto con investigadores de estos países, destacaron en términos de número de publicaciones. Fue relevante el uso de inteligencia artificial para prever la evolución de la pandemia, orientar medidas gubernamentales y apoyar el diagnóstico. Conclusión: se confirma la tendencia de liderazgo chino e indio y se aboga por la colaboración para aprovechar la salud digital en los demás países del grupo.

Biografía del autor/a

Nadyelle Elias Santos Alencar, Federal University of Piauí

Master of Nursing, Department of Nursing, Federal University of Piauí, Teresina (PI), Brazil. 

Letícia Bastos Conrado, State University of Ceará

Bachelor of Nutrition, State University of Ceará, Fortaleza (CE), Brazil. 

Paulo Henrique Leal de Sousa, Oswaldo Cruz Foundation

Master of Epidemiology in Public Health, National School of Public Health, Oswaldo Cruz Foundation, Rio de Janeiro (RJ), Brazil.

Amanda Luiza Marinho Feitosa, Visconde de Sabóia Public Health School

Specialist in Family Health, Visconde de Sabóia Public Health School, Sobral (CE), Brazil. 

Kelen Gomes Ribeiro, Federal University of Ceará

Professor, Faculty of Medicine, Federal University of Ceará, Fortaleza (CE), Brazil.

Cláudia Alexandra da Cunha Pernencar, NOVA University of Lisbon

Professor, Faculty of Social and Human Sciences, NOVA University of Lisbon, Lisbon, Portugal.

Ivana Cristina de Holanda Cunha Barreto, Oswaldo Cruz Foundation

Researcher, Oswaldo Cruz Foundation, Eusébio (CE), Brazil.

Citas

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Publicado

2024-11-19

Cómo citar

Alencar, N. E. S., Conrado, L. B., de Sousa, P. H. L., Feitosa, A. L. M., Ribeiro, K. G., Pernencar, C. A. da C., & Barreto, I. C. de H. C. (2024). Salud digital y Covid-19 en los países BRICS: análisis bibliométrico. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1369

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