A percepção dos enfermeiros obstetras frente aos índices de mortalidade materna evitável no Estado do Pará: Um estudo de análise de conteúdo no contexto da Bioética

Tesis Materias > Biomedicina Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Cerrado Portugués A mortalidade materna evitável-é uma das mais graves tragédias e violações dos direitos humanos às mulheres em estado gravídico e puerperal - e motivo de preocupação frente aos impactos sociais resultantes e da relevância à saúde pública.Trata-se de estudo de natureza qualitativa e descritiva; a coleta de dados ocorreu na maternidade da Fundação Santa de Misericórdia do Pará. A amostra contou com 32 participantes distribuídos nas seguintes unidades: Centro obstétrico(CO);Triagem Obstétrica(TO)e Alojamento conjunto (ALCON). Cada participante respondeu a um questionário contendo perguntas fechadas e abertas. Buscou-se os resultados por meio dos objetivos gerais:analisar o relato dos enfermeiros obstetras da maternidade da Fundação Santa Casa do Pará, a respeito do alto índice de mortalidade materna e dos impactos sociais decorrentes. Para tanto foram traçados os seguintes objetivos específicos: Conhecer a opinião dos participantes sobre as causas dos elevados índices, contribuições e necessidades para redução e bem como o entendimento deles sobre os impactos sociais decorrentes desses obituários. O tratamento dos dados teve prosseguimento por meio da técnica de análise de conteúdo de Laurence Bardin, do tipo categorial temática. Foram construídas 9 categorias e, conforme as palavras surgiram nosescritos,identificou-seoqueelas tiveram em comum, permitindo o agrupamento das unidades semelhantes. Os pesquisados demonstraram conhecimento sobre a relação entre a Bioética e os cuidados em saúde e sua importância;a hipertensão arterial e a hemorragia pós- parto como causas da MM, tendo como substrato a assistência materna deficitária principalmente nos lugares remotos.É preciso mais investimentos dos gestores para melhorar a saúde pública mormente o pré-natal. Os impactos sociais resultantes incluem mal querência aos órfãos vulneráveis socialmente. metadata Pinto Sfair, Suely Damião mail suelly_sfair@hotmail.com (2022) A percepção dos enfermeiros obstetras frente aos índices de mortalidade materna evitável no Estado do Pará: Um estudo de análise de conteúdo no contexto da Bioética. Masters thesis, SIN ESPECIFICAR.

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Resumen

A mortalidade materna evitável-é uma das mais graves tragédias e violações dos direitos humanos às mulheres em estado gravídico e puerperal - e motivo de preocupação frente aos impactos sociais resultantes e da relevância à saúde pública.Trata-se de estudo de natureza qualitativa e descritiva; a coleta de dados ocorreu na maternidade da Fundação Santa de Misericórdia do Pará. A amostra contou com 32 participantes distribuídos nas seguintes unidades: Centro obstétrico(CO);Triagem Obstétrica(TO)e Alojamento conjunto (ALCON). Cada participante respondeu a um questionário contendo perguntas fechadas e abertas. Buscou-se os resultados por meio dos objetivos gerais:analisar o relato dos enfermeiros obstetras da maternidade da Fundação Santa Casa do Pará, a respeito do alto índice de mortalidade materna e dos impactos sociais decorrentes. Para tanto foram traçados os seguintes objetivos específicos: Conhecer a opinião dos participantes sobre as causas dos elevados índices, contribuições e necessidades para redução e bem como o entendimento deles sobre os impactos sociais decorrentes desses obituários. O tratamento dos dados teve prosseguimento por meio da técnica de análise de conteúdo de Laurence Bardin, do tipo categorial temática. Foram construídas 9 categorias e, conforme as palavras surgiram nosescritos,identificou-seoqueelas tiveram em comum, permitindo o agrupamento das unidades semelhantes. Os pesquisados demonstraram conhecimento sobre a relação entre a Bioética e os cuidados em saúde e sua importância;a hipertensão arterial e a hemorragia pós- parto como causas da MM, tendo como substrato a assistência materna deficitária principalmente nos lugares remotos.É preciso mais investimentos dos gestores para melhorar a saúde pública mormente o pré-natal. Os impactos sociais resultantes incluem mal querência aos órfãos vulneráveis socialmente.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Mortalidade materna evitável, Enfermagem obstétrica, Bioética; Impactos sociais
Clasificación temática: Materias > Biomedicina
Divisiones: Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Depositado: 20 Oct 2023 23:30
Ultima Modificación: 20 Oct 2023 23:30
URI: https://repositorio.uneatlantico.es/id/eprint/928

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