Bolhas de informação e a comunicação da saúde pública


  • Diego dos Santos Vega Senise
  • Leandro Leonardo Batista Universidade de São Paulo. Escola de Comunicação e Artes



Bolhas de informação, Câmara de eco;, Viralização, Comunicação em Saúde


Este artigo propõe uma revisão de literatura sobre as chamadas bolhas de informação e temas correlatos. O objetivo é identificar
como a existências dessas bolhas pode afetar a Comunicação em Saúde e endereçar novos caminhos de pesquisa científica. O
fenômeno é complexo, pois envolve tanto aspectos tecnológicos quanto psicológicos dos cidadãos. As implicações das bolhas
têm sido discutidas no âmbito da política, eleições, saúde e de intolerância de um modo geral. A “desinformação” sobre doenças
gerada nas bolhas impulsiona riscos concretos à vida. São discutidas também estratégias para evitar o impacto das bolhas.


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Como Citar

Senise, D. dos S. V., & Batista, L. L. (2020). Bolhas de informação e a comunicação da saúde pública. BIS. Boletim Do Instituto De Saúde, 21(1), 17–30.

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