儿童早期纵向BMI百分位数分类模式与社区水平的健康社会决定因素的相关性。

Mehak Gupta, Thao-Ly T Phan, Félice Lê-Scherban, Daniel Eckrich, H Timothy Bunnell, Rahmatollah Beheshti
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引用次数: 0

摘要

背景:了解健康的社会决定因素(SDOH)可能是儿童肥胖的风险因素,对于制定有针对性的干预措施来预防肥胖很重要。先前的研究已经检查了这些风险因素,主要将肥胖作为一个静态的结果变量。目的:本研究旨在根据BMI百分位数分类或BMI百分位分类随时间的变化来确定不同的亚群,并探讨这些与0至7岁儿童社区水平SDOH因素的纵向关联。方法:使用潜在类别生长(混合)模型(LCGMM),我们在0至7岁的儿童中确定了不同的BMI%分类组。我们使用多项逻辑回归来研究SDOH因素与每个BMI%分类组之间的相关性。结果:在36910名儿童的研究队列中,出现了五个不同的BMI%分类组:始终肥胖(n=429;1.16%)、大多数时候超重(n=15006;40.65%)、增加BMI%(n=9060;24.54%)、减少BMI%,其他三组儿童更有可能生活在贫困率、失业率、拥挤家庭和单亲家庭较高、学前教育入学率较低的社区。结论:邻里水平的SDOH因素与儿童的BMI%分类和分类随时间的变化有显著相关性。这突出了为不同群体制定量身定制的肥胖干预措施的必要性,以解决社区面临的可能影响其内儿童体重和健康的障碍。
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Associations of longitudinal BMI percentile classification patterns in early childhood with neighborhood-level social determinants of health.

Background: Understanding social determinants of health (SDOH) that may be risk factors for childhood obesity is important to developing targeted interventions to prevent obesity. Prior studies have examined these risk factors, mostly examining obesity as a static outcome variable.

Methods: We extracted EHR data from 2012-2019 for a children's health system that includes 2 hospitals and wide network of outpatient clinics spanning 5 East Coast states in the US. Using data-driven and algorithmic clustering, we have identified distinct BMI-percentile classification groups in children from 0 to 7 years of age. We used two separate algorithmic clustering methods to confirm the robustness of the identified clusters. We used multinomial logistic regression to examine the associations between clusters and 27 neighborhood SDOHs and compared positive and negative SDOH characteristics separately.

Results: From the cohort of 36,910 children, five BMI-percentile classification groups emerged: always having obesity (n=429; 1.16%), overweight most of the time (n=15,006; 40.65%), increasing BMI-percentile (n=9,060; 24.54%), decreasing BMI-percentile (n=5,058; 13.70%), and always normal weight (n=7,357; 19.89%). Compared to children in the decreasing BMI-percentile and always normal weight groups, children in the other three groups were more likely to live in neighborhoods with higher poverty, unemployment, crowded households, single-parent households, and lower preschool enrollment.

Conclusions: Neighborhood-level SDOH factors have significant associations with children's BMI-percentile classification and changes in classification. This highlights the need to develop tailored obesity interventions for different groups to address the barriers faced by communities that can impact the weight and health of children living within them.

Impact statement: This study demonstrates the association between longitudinal BMI-percentile patterns and SDOH in early childhood. Five distinct clusters with different BMI-percentile trajectories are found and a strong association between these clusters and SDOH is observed. Our findings highlight the importance of targeted prevention and treatment interventions based on children's SDOH.

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