论文标题
田纳西州谢尔比县邻里因素与成人肥胖之间的关联:地理空间机器学习方法
Association Between Neighborhood Factors and Adult Obesity in Shelby County, Tennessee: Geospatial Machine Learning Approach
论文作者
论文摘要
肥胖是每年至少280万人死亡的全球流行病。这种复杂的疾病与重大的社会经济负担,工作效率降低,失业和其他社会决定因素(SDOH)差异有关。目的:这项研究的目的是使用地理空间机器学习方法研究SDOH对美国田纳西州谢尔比县成年人肥胖症患病率的影响。肥胖症患病率是从公共可用的CDC 500城市数据库中获得的,而SDOH指标则从美国人口普查和USDA提取。我们使用Getis-ord Gi*统计数据和校准多个模型研究了肥胖症患病率模式的地理分布,以研究SDOH与成人肥胖之间的关联。此外,使用无监督的机器学习来进行分组分析,以研究肥胖症患病率和相关SDOH指标的分布。结果表明,在谢尔比县内经历了成人肥胖症高的社区中,有很高的比例。在人口普查区中,家庭收入中位数以及黑人,住房租房者的百分比,居住在贫困水平以下的人,五十五岁或以上,未婚且未投保的人与成人肥胖症患病率具有显着关联。分组分析表明,处境不利的社区肥胖症患病率差异。需要更多的研究来检查地理位置,SDOH和慢性疾病之间的联系。这些发现描述了处于不利地位的社区内肥胖症的患病率明显更高,并且可以利用其他地理空间信息,以提供有价值的见解,以告知健康决策和干预措施,从而减轻肥胖症患病率的风险因素。
Obesity is a global epidemic causing at least 2.8 million deaths per year. This complex disease is associated with significant socioeconomic burden, reduced work productivity, unemployment, and other social determinants of Health (SDoH) disparities. Objective: The objective of this study was to investigate the effects of SDoH on obesity prevalence among adults in Shelby County, Tennessee, USA using a geospatial machine-learning approach. Obesity prevalence was obtained from publicly available CDC 500 cities database while SDoH indicators were extracted from the U.S. Census and USDA. We examined the geographic distributions of obesity prevalence patterns using Getis-Ord Gi* statistics and calibrated multiple models to study the association between SDoH and adult obesity. Also, unsupervised machine learning was used to conduct grouping analysis to investigate the distribution of obesity prevalence and associated SDoH indicators. Results depicted a high percentage of neighborhoods experiencing high adult obesity prevalence within Shelby County. In the census tract, median household income, as well as the percentage of individuals who were black, home renters, living below the poverty level, fifty-five years or older, unmarried, and uninsured, had a significant association with adult obesity prevalence. The grouping analysis revealed disparities in obesity prevalence amongst disadvantaged neighborhoods. More research is needed that examines linkages between geographical location, SDoH, and chronic diseases. These findings, which depict a significantly higher prevalence of obesity within disadvantaged neighborhoods, and other geospatial information can be leveraged to offer valuable insights informing health decision-making and interventions that mitigate risk factors for increasing obesity prevalence.