Tecnologia e Cuidados de Saúde aos Profissionais das Unidades Básicas de Saúde – UBS’s da Região do Baixo São Francisco, em Contexto de Pandemia do COVID-19.
Tesis Materias > Ciencias Sociales Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Cerrado Portugués Introdução: Em 11 de março de 2020, a Organização Mundial da Saúde (OMS) declarou que um surto da doença viral COVID-19, identificado pela primeira vez em dezembro de 2019 em Wuhan, China, atingiu o nível de uma pandemia global. Citando preocupações com “os alarmantes níveis de disseminação e severidade”, a OMS pediu aos governos que tomassem medidas urgentes e agressivas para impedir a propagação do vírus. A escala e a gravidade da pandemia do COVID-19 aumentaram claramente até ao nível de uma ameaça à saúde pública, o que motivou os governantes à imposição de quarentena ou isolamento, limitando a liberdade de movimento e aglomerações. Diante do cenário da pandemia, esta pesquisa tem o objetivo de compreender o atendimento à saúde dos profissionais da saúde que oferecem atendimento aos pacientes da COVID-19 nas Unidades Básicas de Saúde (UBS’s) da Região do Baixo São Francisco. Metodologia: Trata-se de um estudo exploratório, de recorte transversal e abordagem qualitativa, que incluiu entrevistas com 30 profissionais de 10 Unidades Básicas de Saúde dos municípios da Região do Baixo São Francisco. Resultados: Os dados coletados na pesquisa permitiram conhecer os efeitos da Pandemia da COVID-19 na saúde dos profissionais que trabalham nas Unidades Básicas de Saúde dos municípios da Região do Baixo São Francisco e demonstraram que mais de 90% da amostra foi acometida por doenças relacionadas com o contexto da pandemia, a maior parte com sintomas graves e quase 30% sendo acompanhados por médicos das UBS’s. Conclusões: A proposta é criar um Núcleo de Apoio a estes profissionais, aproveitando os trabalhadores especialistas nas mais diversas áreas, que possam prestar assistência necessária e integrada, fazendo uso das novas tecnologias da informação, de forma virtualizada, para que os trabalhadores possam ser alcançados pelo acompanhamento médico-psicossocial. Isso porque, se faz necessário que haja uma proposta de solução, para que estes profissionais possam continuar cuidando da população usuária em boas condições de vida e saúde. metadata Teles da Silva, Bruno mail bruno_ssosaude@hotmail.com (2022) Tecnologia e Cuidados de Saúde aos Profissionais das Unidades Básicas de Saúde – UBS’s da Região do Baixo São Francisco, em Contexto de Pandemia do COVID-19. Masters thesis, SIN ESPECIFICAR.
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Introdução: Em 11 de março de 2020, a Organização Mundial da Saúde (OMS) declarou que um surto da doença viral COVID-19, identificado pela primeira vez em dezembro de 2019 em Wuhan, China, atingiu o nível de uma pandemia global. Citando preocupações com “os alarmantes níveis de disseminação e severidade”, a OMS pediu aos governos que tomassem medidas urgentes e agressivas para impedir a propagação do vírus. A escala e a gravidade da pandemia do COVID-19 aumentaram claramente até ao nível de uma ameaça à saúde pública, o que motivou os governantes à imposição de quarentena ou isolamento, limitando a liberdade de movimento e aglomerações. Diante do cenário da pandemia, esta pesquisa tem o objetivo de compreender o atendimento à saúde dos profissionais da saúde que oferecem atendimento aos pacientes da COVID-19 nas Unidades Básicas de Saúde (UBS’s) da Região do Baixo São Francisco. Metodologia: Trata-se de um estudo exploratório, de recorte transversal e abordagem qualitativa, que incluiu entrevistas com 30 profissionais de 10 Unidades Básicas de Saúde dos municípios da Região do Baixo São Francisco. Resultados: Os dados coletados na pesquisa permitiram conhecer os efeitos da Pandemia da COVID-19 na saúde dos profissionais que trabalham nas Unidades Básicas de Saúde dos municípios da Região do Baixo São Francisco e demonstraram que mais de 90% da amostra foi acometida por doenças relacionadas com o contexto da pandemia, a maior parte com sintomas graves e quase 30% sendo acompanhados por médicos das UBS’s. Conclusões: A proposta é criar um Núcleo de Apoio a estes profissionais, aproveitando os trabalhadores especialistas nas mais diversas áreas, que possam prestar assistência necessária e integrada, fazendo uso das novas tecnologias da informação, de forma virtualizada, para que os trabalhadores possam ser alcançados pelo acompanhamento médico-psicossocial. Isso porque, se faz necessário que haja uma proposta de solução, para que estes profissionais possam continuar cuidando da população usuária em boas condições de vida e saúde.
| Tipo de Documento: | Tesis (Masters) |
|---|---|
| Palabras Clave: | Baixo São Francisco, COVID-19, SUS, Tecnologia. Trabalhadores. |
| Clasificación temática: | Materias > Ciencias Sociales |
| Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster |
| Depositado: | 16 Nov 2023 23:30 |
| Ultima Modificación: | 16 Nov 2023 23:30 |
| URI: | https://repositorio.uneatlantico.es/id/eprint/1976 |
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