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Using Google Street View to examine associations between built environment characteristics and U.S. health outcomes

机译:使用Google街景视图来检查建筑环境特征与美国健康结果之间的关联

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Neighborhood attributes have been shown to influence health, but advances in neighborhood research has been constrained by the lack of neighborhood data for many geographical areas and few neighborhood studies examine features of nonmetropolitan locations. We leveraged a massive source of Google Street View (GSV) images and computer vision to automatically characterize national neighborhood built environments. Using road network data and Google Street View API, from December 15, 2017-May 14, 2018 we retrieved over 16 million GSV images of street intersections across the United States. Computer vision was applied to label each image. We implemented regression models to estimate associations between built environments and county health outcomes, controlling for county-level demographics, economics, and population density. At the county level, greater presence of highways was related to lower chronic diseases and premature mortality. Areas characterized by street view images as ‘rural’ (having limited infrastructure) had higher obesity, diabetes, fair/poor self-rated health, premature mortality, physical distress, physical inactivity and teen birth rates but lower rates of excessive drinking. Analyses at the census tract level for 500 cities revealed similar adverse associations as was seen at the county level for neighborhood indicators of less urban development. Possible mechanisms include the greater abundance of services and facilities found in more developed areas with roads, enabling access to places and resources for promoting health. GSV images represents an underutilized resource for building national data on neighborhoods and examining the influence of built environments on community health outcomes across the United States.
机译:已经显示出邻里属性会影响健康,但是由于缺少许多地理区域的邻里数据,因此邻里研究的进展受到了限制,并且很少有邻里研究研究非大都市地区的特征。我们利用了大量的Google街景(GSV)图像和计算机视觉来自动表征全国邻里建成的环境。从2017年12月15日至2018年5月14日,我们使用道路网络数据和Google Street View API检索了美国超过1600万个GSV街道交叉口图像。应用计算机视觉标记每个图像。我们实施了回归模型,以估计建筑环境与县卫生结果之间的关联,控制县级人口统计学,经济和人口密度。在县一级,高速公路的存在与较低的慢性病和过早死亡有关。街景图像特征为“农村”(基础设施有限)的地区,肥胖,糖尿病,自我评估的健康状况良好/较差,过早死亡,身体窘迫,身体不活跃和青少年出生率较高,但过量饮酒的比例较低。在500个城市的人口普查区域进行的分析显示,与县一级的城市发展欠佳的邻里指标相比,存在相似的不利关联。可能的机制包括在较发达地区有道路的更多服务和设施,使人们有机会获得促进健康的场所和资源。 GSV图像代表了未充分利用的资源,用于在全国范围内建立国家数据并检查建筑环境对全美国社区健康结果的影响。

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