Department of Health Science and Public Health, St. Bonaventure University, Allegany, NY, United States.
Front Public Health. 2023 Jan 6;10:1052957. doi: 10.3389/fpubh.2022.1052957. eCollection 2022.
The Centers for Disease Control and Prevention (CDC) estimates 39.8% of United States (US) residents have obesity. This study examined obesity-related factors at the county-level to determine the indirect effects on physical inactivity, insufficient sleep duration, income inequality, food insecurity, on obesity rates.
Using the 2018 Robert Wood Johnson Foundation (RWJF) County Health Rankings data set, a multiple regression analysis was conducted to measure the percentage of the obesity rate explained by physical inactivity, insufficient sleep duration, food insecurity, and income inequality geographically weighted county means. RWJF combines US federal and state datasets to produce a composite dataset comprised of information primarily from adults over the age of 18 from the 3,143 counties found within US borders. The aggregate county-level data serves as the unit of measure ( = 3,143). The indirect relationships (the product of two direct relationships) between obesity-related variables and obesity were measured and illustrated through a path analysis model.
This study found the combination of independent variables explained 53% of the obesity rates in the US, = 0.53, < 0.001, two-tailed. This study also found that food insecurity has both a direct and indirect effect on obesity, physical inactivity, and insufficient sleep duration. Physical inactivity has a direct effect on obesity and insufficient sleep duration, along with an indirect effect on obesity. Insufficient sleep duration has a direct effect on obesity.
This analysis found that food insecurity indirectly impacts an obesogenic environment and drives county-level BMI averages. The dataset used for analysis predates the COVID-19 pandemic but presents the effect of food insecurity during a normative year. The findings, though interesting, provide an opportunity for future research.
疾病控制与预防中心(CDC)估计,美国 39.8%的居民患有肥胖症。本研究在县一级检查了与肥胖相关的因素,以确定它们对身体活动不足、睡眠不足、收入不平等、粮食不安全等因素对肥胖率的间接影响。
本研究使用 2018 年罗伯特·伍德·约翰逊基金会(RWJF)县健康排名数据集,通过多元回归分析,衡量身体活动不足、睡眠不足、粮食不安全和收入不平等的地理加权县平均值对肥胖率的解释程度。RWJF 结合了美国联邦和州数据集,生成了一个综合数据集,主要由美国境内 3143 个县的 18 岁以上成年人的信息组成。汇总的县级数据作为度量单位(=3143)。通过路径分析模型测量并说明了肥胖相关变量与肥胖之间的间接关系(两个直接关系的乘积)。
本研究发现,独立变量的组合解释了美国肥胖率的 53%,=0.53,<0.001,双侧。本研究还发现,粮食不安全对肥胖、身体活动不足和睡眠不足既有直接影响,也有间接影响。身体活动不足对肥胖和睡眠不足有直接影响,对肥胖也有间接影响。睡眠不足对肥胖有直接影响。
本分析发现,粮食不安全会间接地影响肥胖环境,并推动县级 BMI 平均值的变化。用于分析的数据集中包含了 COVID-19 大流行之前的数据,但也呈现了正常年份中粮食不安全的影响。这些发现虽然有趣,但为未来的研究提供了机会。