A Revolução Silenciosa do Big Data em Medicina

Autores

  • Bernardo Neves Departamento de Medicina Interna - Hospital da Luz, Lisboa, Portugal
  • Anabela Raimundo Departamento de Medicina Interna - Hospital da Luz, Lisboa, Portugal
  • Ziad Obermeyer Brigham and Women’s Hospital, Harvard Medical School, Boston, USA

DOI:

https://doi.org/10.24950/rspmi/Perspective/2017

Palavras-chave:

Conjuntos de Dados, Medicina Baseada em Evidência, Registos de Saúde Electrónicos

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Referências

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Ficheiros Adicionais

Publicado

29-12-2017

Como Citar

1.
Neves B, Raimundo A, Obermeyer Z. A Revolução Silenciosa do Big Data em Medicina. RPMI [Internet]. 29 de Dezembro de 2017 [citado 29 de Março de 2024];24(4):262-4. Disponível em: https://revista.spmi.pt/index.php/rpmi/article/view/752

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Perspectiva