Nguyen Quynh C, Tasdizen Tolga, Alirezaei Mitra, Mane Heran, Yue Xiaohe, Merchant Junaid S, Yu Weijun, Drew Laura, Li Dapeng, Nguyen Thu T
Department of Epidemiology and Biostatistics, University of Maryland School of Public Health, College Park, MD, United States.
Department of Electrical and Computer Engineering, Scientific Computing and Imaging Institute, University of Utah, Salt Lake City, UT, United States.
SSM Popul Health. 2024 Apr 19;26:101670. doi: 10.1016/j.ssmph.2024.101670. eCollection 2024 Jun.
This study utilizes innovative computer vision methods alongside Google Street View images to characterize neighborhood built environments across Utah.
Convolutional Neural Networks were used to create indicators of street greenness, crosswalks, and building type on 1.4 million Google Street View images. The demographic and medical profiles of Utah residents came from the Utah Population Database (UPDB). We implemented hierarchical linear models with individuals nested within zip codes to estimate associations between neighborhood built environment features and individual-level obesity and diabetes, controlling for individual- and zip code-level characteristics (n = 1,899,175 adults living in Utah in 2015). Sibling random effects models were implemented to account for shared family attributes among siblings (n = 972,150) and twins (n = 14,122).
Consistent with prior neighborhood research, the variance partition coefficients (VPC) of our unadjusted models nesting individuals within zip codes were relatively small (0.5%-5.3%), except for HbA1c (VPC = 23%), suggesting a small percentage of the outcome variance is at the zip code-level. However, proportional change in variance (PCV) attributable to zip codes after the inclusion of neighborhood built environment variables and covariates ranged between 11% and 67%, suggesting that these characteristics account for a substantial portion of the zip code-level effects. Non-single-family homes (indicator of mixed land use), sidewalks (indicator of walkability), and green streets (indicator of neighborhood aesthetics) were associated with reduced diabetes and obesity. Zip codes in the third tertile for non-single-family homes were associated with a 15% reduction (PR: 0.85; 95% CI: 0.79, 0.91) in obesity and a 20% reduction (PR: 0.80; 95% CI: 0.70, 0.91) in diabetes. This tertile was also associated with a BMI reduction of -0.68 kg/m2 (95% CI: -0.95, -0.40).
We observe associations between neighborhood characteristics and chronic diseases, accounting for biological, social, and cultural factors shared among siblings in this large population-based study.
本研究运用创新的计算机视觉方法以及谷歌街景图像来描绘犹他州各社区的建成环境。
利用卷积神经网络在140万张谷歌街景图像上创建街道绿化、人行横道和建筑类型指标。犹他州居民的人口统计学和医学资料来自犹他州人口数据库(UPDB)。我们实施了分层线性模型,将个体嵌套在邮政编码区域内,以估计社区建成环境特征与个体层面肥胖和糖尿病之间的关联,并控制个体和邮政编码区域层面的特征(2015年居住在犹他州的1,899,175名成年人)。实施了同胞随机效应模型以考虑兄弟姐妹(972,150人)和双胞胎(14,122人)之间共享的家庭属性。
与先前的社区研究一致,我们将个体嵌套在邮政编码区域内的未调整模型的方差划分系数(VPC)相对较小(0.5%-5.3%),糖化血红蛋白除外(VPC = 23%),这表明结果方差的一小部分在邮政编码区域层面。然而,纳入社区建成环境变量和协变量后,邮政编码区域导致的方差比例变化(PCV)在11%至67%之间,这表明这些特征占邮政编码区域层面效应的很大一部分。非独栋房屋(混合土地利用指标)、人行道(可步行性指标)和绿化街道(社区美观指标)与糖尿病和肥胖的减少相关。非独栋房屋处于第三个三分位数的邮政编码区域与肥胖减少15%(PR:0.85;95%CI:0.79,0.91)和糖尿病减少20%(PR:0.80;95%CI:0.70,0.91)相关。这个三分位数区域还与体重指数降低-0.68kg/m²(95%CI:-0.95,-0.40)相关。
在这项基于大量人群的研究中,我们观察到社区特征与慢性病之间的关联,并考虑了兄弟姐妹之间共享的生物、社会和文化因素。