Big Data en salud: retos y oportunidades.

  1. Ernestina Menasalvas 1
  2. Consuelo Gonzalo 1
  3. Alejandro Rodríguez González 1
  1. 1 Universidad Politécnica de Madrid
    info

    Universidad Politécnica de Madrid

    Madrid, España

    ROR https://ror.org/03n6nwv02

Journal:
Economía industrial

ISSN: 0422-2784

Year of publication: 2017

Issue Title: Nuevas tecnologías digitales

Issue: 405

Pages: 87-97

Type: Article

More publications in: Economía industrial

Abstract

Big Data applications in the Healthcare Sector indicate a high potential for improving the overall efficiency and quality of care delivery. In this paper some initiatives in this direction are analyzed, including several technical challenges that big data analytics has still to address in the health care sector, such as: i) natural language processing, ii) text mining, iii) interoperability, iv) annotation of images and v) confidenciality and data security

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