吃零食
感觉
医学
大流行
社会经济地位
1型糖尿病
2型糖尿病
人口
心理学
糖尿病管理
老年学
糖尿病
发展心理学
家庭医学
肥胖
2019年冠状病毒病(COVID-19)
疾病
环境卫生
社会心理学
传染病(医学专业)
病理
内分泌学
内科学
作者
Christine March,Linda M. Siminerio,Radhika Muzumdar,Ingrid Libman
标识
DOI:10.1177/26350106211051298
摘要
Purpose The purpose of this study is to survey parents of youth with type 1 diabetes during the COVID-19 pandemic with school closures to better understand the implications of the school day on health care behaviors. Methods A cross-sectional, online survey was distributed to parents of youth with type 1 diabetes ≤19 years of age in a large, academic diabetes center. Questions encompassed perceived changes in management behaviors and plans for return to school. Subgroup analysis compared parent responses by child’s age, reported stressors, and socioeconomic markers. Results Parents reported a worsening in their child’s diabetes health behaviors during school closures compared to what they perceived during a regular school day before the pandemic. More than half of parents reported feeling that their child was unable to maintain a normal routine, with particular implications for snacking between meals, daily physical activity, and sleep habits. Families with adolescents or those experiencing multiple pandemic-related stressors reported greater challenges. In open-ended responses, families highlighted difficulty in balancing school, work, and diabetes care and expressed concerns about the mental health repercussions of school closures for their children. Nearly half of parents reported being at least moderately worried about return to school, whereas only a minority reported seeking guidance from their diabetes provider. Conclusions Parent-reported disruptions of school-day routines frequently had adverse consequences for diabetes management in this population. These findings highlight the importance of a school-day routine for children with type 1 diabetes; during closures, families may benefit from mitigating strategies to maintain effective habits.
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