Semântica em prontuários eletrônicos para oncologia pediátrica: uma revisão integrativa

Autores

  • Elaine Barbosa de Figueiredo Professora, Serviço Nacional de Aprendizagem Comercial, São Paulo, SP, Brasil
  • Ferrucio de Franco Rosa Pesquisador, Centro de Tecnologia da Informação Renato Archer, Campinas, SP, Brasil e Professor, Centro Universitário Campo Limpo Paulista (UNIFACCAMP), Campo Limpo Paulista, SP, Brasil https://orcid.org/0000-0001-9504-496X
  • Ricardo Antônio Zanetti Pesquisador, Centro de Tecnologia da Informação Renato Archer, Campinas, SP, Brasil
  • Mariangela Dametto Pesquisador, Centro de Tecnologia da Informação Renato Archer, Campinas, SP, Brasil https://orcid.org/0000-0001-9803-1929
  • Rodrigo Bonacin Pesquisador, Centro de Tecnologia da Informação Renato Archer, Campinas, SP, Brasil e Professor, Centro Universitário Campo Limpo Paulista (UNIFACCAMP), Campo Limpo Paulista, SP, Brasil https://orcid.org/0000-0003-3441-0887

DOI:

https://doi.org/10.59681/2175-4411.v15.i2.2023.993

Palavras-chave:

Registros Eletrônicos de Saúde, Ontologias Biomédicas, Oncologia, Vocabulário Controlado

Resumo

Objetivo: Este estudo tem como objetivo analisar o uso de Sistemas de Organização do Conhecimento (SOC) como meio de enriquecimento do Prontuário Eletrônico do Paciente (PEP) para o domínio da oncologia pediátrica. Métodos: Foi aplicado um método de revisão integrativa da literatura. Foram realizadas três revisões de literatura, com busca de artigos de 2016 até Julho/2023 em PubMed, Scopus, IEEE Xplore e ACM Digital Library escritos em Inglês ou Português. Resultados: Foram analisados 52 artigos. Os resultados apontam os padrões adotados para a especificação de PEP e descrevem os SOC mais frequentemente usados com PEP na oncologia e também no domínio da oncologia pediátrica. Conclusão: Embora existam esforços para adotar padrões internacionais para PEP, vários projetos não fazem uso desses padrões. Os sistemas de PEPs para oncologia, em geral, fazem uso mais amplo de SOCs, enquanto na oncologia pediátrica o foco está nos relacionados à genética. Há necessidade de mais pesquisas para integrar PEP com padrões internacionais.

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18-10-2023

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Figueiredo, E. B. de, Rosa, F. de F., Zanetti, R. A., Dametto, M., & Bonacin, R. (2023). Semântica em prontuários eletrônicos para oncologia pediátrica: uma revisão integrativa. Journal of Health Informatics, 15(2), 61–69. https://doi.org/10.59681/2175-4411.v15.i2.2023.993

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