Reestruturação das profissões da saúde e perspectivas para o futuro na era da Inteligência Artificial

Autores

DOI:

https://doi.org/10.51723/ccs.v32i03.1060

Palavras-chave:

Inteligência Artificial, Avaliação da Tecnologia Biomédica, Educação Médica, Aprendizado Profundo, Segurança Computacional

Resumo

A aplicação de dispositivos e algoritmos com inteligência artificial na saúde vem tornando-se uma realidade em diversas áreas. Porém, como no caso de outras tecnologias já utilizadas, para que essas ferramentas efetivamente resultem em melhoria da qualidade do cuidado, o profissional de saúde precisa saber avaliar de forma crítica seus aspectos positivos e negativos, além de suas limitações. Para isso, é de extrema importância a adoção de uma postura colaborativa, e não de enfrentamento, com esses dispositivos. O presente ensaio busca descrever um panorama acerca da inteligência artificial e seu uso nas áreas de saúde, além de elucidar pontos e levantar reflexões sobre riscos, benefícios e o dilema da desumanização do atendimento em saúde. Ainda, busca refletir em relação ao perfil do “profissional do futuro” e os caminhos que as instituições de ensino devem tomar para sua formação.

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Biografia do Autor

Julival Fagundes Ribeiro, Hospital de Base do Distrito Federal - HBDF

Médico. Doutorado em Medicina Tropical pela Universidade de Brasília. Hospital de Base do Distrito Federal (HBDF). Brasília, DF, Brasil. 

Nelson Silvestre Garcia Chaves, Escola Superior de Ciências da Saúde - ESCS

Acadêmico de Medicina. Escola Superior de Ciências da Saúde (ESCS).

Derek Chaves Lopes, Escola Superior de Ciências da Saúde - ESCS

Acadêmico de Medicina. Escola Superior de Ciências da Saúde.

Gabriel Elias de Macedo , Escola Superior de Ciências da Saúde - ESCS

Acadêmico de Medicina. Escola Superior de Ciências da Saúde

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Publicado

24.09.2021

Como Citar

1.
Fagundes Ribeiro J, Silvestre Garcia Chaves N, Chaves Lopes D, Elias de Macedo G. Reestruturação das profissões da saúde e perspectivas para o futuro na era da Inteligência Artificial. Com. Ciências Saúde [Internet]. 24º de setembro de 2021 [citado 26º de abril de 2024];32(03). Disponível em: https://revistaccs.escs.edu.br/index.php/comunicacaoemcienciasdasaude/article/view/1060

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Saúde Coletiva

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