Saúde digital e covid-19 nos países BRICS: análise bibliométrica

Autores

  • 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

Palavras-chave:

Países em Desenvolvimento, Tecnologia Biomédica, COVID-19

Resumo

Objetivo: analisar o estado da arte quanto às soluções de saúde digital para o enfrentamento da Covid-19 desenvolvidas e implementadas pelos países BRICS. Método: análise bibliométrica a partir da revisão de escopo realizada nas bases de dados Medline/Pubmed, Lilacs, Scopus e Web of Science em agosto de 2022. Resultados: foram incluídos 430 registros que apresentavam soluções digitais em um dos países BRICS, com foco na vigilância, prevenção/controle, ou manejo clínico da Covid-19. China e Índia e pesquisadores desses países se destacam em número de publicações. Foi relevante o uso da inteligência artificial na previsão da evolução da pandemia, direcionamento de medidas governamentais, e apoio diagnóstico. Conclusão: confirma-se a tendência de liderança chinesa e indiana e defende-se a colaboração para alavancar a saúde digital nos demais países do grupo.

 

Biografia do Autor

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.

Referências

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Yang Q, Xu H, Tang X, Hu C, Wang P, Xiáng Y, et al. Medical Imaging Engineering and Technology Branch of the Chinese Society of Biomedical Engineering expert consensus on the application of Emergency Mobile Cabin CT. Quant Imaging Med Surg. 2020;10(11):2191-2207.

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Publicado

19-11-2024

Como 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). Saúde digital e covid-19 nos países BRICS: análise bibliométrica. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1369

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