Rural Children’s Well-Being in the Context of the COVID-19 Pandemic: Perspectives from Children in the Midwestern United States

International journal on child maltreatment : research, policy and practice(2022)

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摘要
Children in rural areas are more likely to experience a variety of risk factors that increase their vulnerability to physical and mental health disparities. Bronfenbrenner’s ecological model (1986) was used as a framework for understanding rural children’s perceptions and well-being within multiple interactive contexts during the COVID-19 pandemic. This phenomenological study was designed to explore rural children’s perceptions of their well-being and the impact of the COVID-19 pandemic on their contexts and well-being. This sub-study of the Children’s Understandings of Well-Being project followed the standard qualitative interview protocol with additional prompts related to the pandemic. Rural children (age 8 to 18, N = 72) from the Midwestern United States participated from March 2020 to November 2021 via teleconferencing. Phenomenological analyses of transcripts focused on the essence of children’s understanding of well-being and their perception of the impact of the pandemic on their contexts and well-being. Each transcript was coded by author 1 and verified by author 2, and discrepancies were identified, discussed, and resolved. The third author served as an external auditor to enhance trustworthiness. First-cycle coding focused on children’s specific references to well-being experiences during COVID-19. Second-cycle selective coding focused on specific well-being experiences and contexts that were impacted by COVID-19. These codes were used to develop two broad themes, “Well This Kinda Stinks, But We Just Adapt” and “ Safety Means Something Different to Me Now .” The meaning of themes and subthemes are explored, with implications for researchers, practitioners, and policymakers.
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关键词
Children,Well-being,COVID-19,Context,Adapt,Safety
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