The Effect of Socioeconomic and Environmental Factors on Obesity

IF 0.3 Q4 GEOGRAPHY
Ortis Yankey, P. Amegbor, M. Essah
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引用次数: 2

Abstract

This paper examined the effect of socio-economic and environmental factors on obesity in Cleveland (Ohio) using an OLS model and three spatial regression models: spatial error model, spatial lag model, and a spatial error model with a spatially lagged response (SEMSLR). Comparative assessment of the models showed that the SEMSLR and the spatial error models were the best models. The spatial effect from the various spatial regression models was statistically significant, indicating an essential spatial interaction among neighboring geographic units and the need to account for spatial dependency in obesity research. The authors also found a statistically significant positive association between the percentage of families below poverty, Black population, and SNAP recipient with obesity rate. The percentage of college-educated had a statistically significant negative association with the obesity rate. The study shows that health outcomes such as obesity are not randomly distributed but are more clustered in deprived and marginalized neighborhoods.
社会经济和环境因素对肥胖的影响
本文采用OLS模型和空间误差模型、空间滞后模型、空间误差模型与空间滞后响应模型(SEMSLR)研究了社会经济和环境因素对俄亥俄州克利夫兰市肥胖的影响。模型的比较评价表明,SEMSLR模型和空间误差模型是最好的模型。不同空间回归模型的空间效应具有显著的统计学意义,表明相邻地理单元之间存在重要的空间相互作用,需要在肥胖研究中考虑空间依赖性。作者还发现,贫困家庭比例、黑人人口和SNAP接受者与肥胖率之间存在统计学上显著的正相关。受过大学教育的比例与肥胖率呈显著负相关。该研究表明,肥胖等健康结果并非随机分布,而是更多地集中在贫困和边缘化的社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
22
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