Tecnologias utilizadas pela enfermagem para predição de deterioração clínica em adultos hospitalizados: revisão de escopo

RESUMO Objetivo: mapear as tecnologias de deterioração clínica precoce utilizadas na prática profissional do enfermeiro na assistência a pacientes adultos hospitalizados. Métodos: trata-se de scoping review, segundo Joanna Briggs Institute Reviewer’s Manual, que busca o mapeamento das principais tecnologias para detecção de deterioração clínica precoce de pacientes hospitalizados disponíveis de uso do enfermeiro, sumarizando-as e indicando lacunas no conhecimento a serem investigadas. Resultados: foram encontrados 27 estudos. As variáveis mais presentes nas tecnologias foram sinais vitais, débito urinário, escalas de consciência e riscos, exame clínico e julgamento do enfermeiro. Os principais desfechos foram acionamento de times de resposta rápida, morte, parada cardiorrespiratória e admissão em unidades de cuidados críticos. Considerações finais: o estudo enfatiza as variáveis mais acuradas na avaliação clínica do paciente, para que se possam priorizar sinais indicativos de potencial gravidade para guiar condutas em saúde visando intervir precocemente diante da deterioração clínica em curso.

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