Aplicaciones médicas de las redes sociales. Aspectos específicos de la pandemia de la COVID-19

  1. Alvarez Mon, M.A. 1
  2. Rodríguez Quiroga, A. 1
  3. De Anta, L. 1
  4. Quintero, J. 1
  1. 1 Servicio de Psiquiatría y Salud Mental, Hospital Universitario Infanta Leonor, Madrid, España
Journal:
Medicine: Programa de Formación Médica Continuada Acreditado

ISSN: 0304-5412

Year of publication: 2020

Series: 13

Issue: 23

Pages: 1305-1310

Type: Article

DOI: 10.1016/J.MED.2020.12.012 DIALNET GOOGLE SCHOLAR

More publications in: Medicine: Programa de Formación Médica Continuada Acreditado

Abstract

For years, social networks have been incorporated into the day-to-day of the majority of the population. In this context, a new area of knowledge in medicine has been developed: infodemiology. It is defined as the evaluation, with the objective of improving public health, of health-related information that users upload to the network. In addition, social networks offer many possibilities for conducting public health campaigns, accessing patients, or carrying out treatment interventions.

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