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首页> 外文期刊>BMC Public Health >Health and the built environment in United States cities: measuring associations using Google Street View-derived indicators of the built environment
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Health and the built environment in United States cities: measuring associations using Google Street View-derived indicators of the built environment

机译:美国城市的健康和建筑环境:使用Google Street View-Serived指标的衡量协会的内置环境

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The built environment is a structural determinant of health and has been shown to influence health expenditures, behaviors, and outcomes. Traditional methods of assessing built environment characteristics are time-consuming and difficult to combine or compare. Google Street View (GSV) images represent a large, publicly available data source that can be used to create indicators of characteristics of the physical environment with machine learning techniques. The aim of this study is to use GSV images to measure the association of built environment features with health-related behaviors and outcomes at the census tract level. We used computer vision techniques to derive built environment indicators from approximately 31 million GSV images at 7.8 million intersections. Associations between derived indicators and health-related behaviors and outcomes on the census-tract level were assessed using multivariate regression models, controlling for demographic factors and socioeconomic position. Statistical significance was assessed at the α?=?0.05 level. Single lane roads were associated with increased diabetes and obesity, while non-single-family home buildings were associated with decreased obesity, diabetes and inactivity. Street greenness was associated with decreased prevalence of physical and mental distress, as well as decreased binge drinking, but with increased obesity. Socioeconomic disadvantage was negatively associated with binge drinking prevalence and positively associated with all other health-related behaviors and outcomes. Structural determinants of health such as the built environment can influence population health. Our study suggests that higher levels of urban development have mixed effects on health and adds further evidence that socioeconomic distress has adverse impacts on multiple physical and mental health outcomes.
机译:建造环境是健康的结构决定因素,并且已被证明会影响健康支出,行为和结果。评估内置环境特征的传统方法是耗时且难以结合或比较。 Google Street View(GSV)图像代表一个大型公开的数据源,可用于创建具有机器学习技术的物理环境的特性指标。本研究的目的是使用GSV图像测量内部环境特征与人口普查级别的健康相关行为和结果。我们使用计算机视觉技术从大约3100万GSV图像派生建筑环境指标,以780万个交叉点。使用多元回归模型评估来自人口普查水平的衍生指标和健康相关行为和结果之间的关联,控制人口因子和社会经济地位。在αα= 0.05级评估统计显着性。单车道道路与糖尿病和肥胖增加有关,而非单身家庭建筑物与下降肥胖,糖尿病和不活动有关。街头绿色与身心痛苦的流行减少有关,以及酗酒减少,但肥胖增加。社会经济缺点与狂暴饮用患病率和与所有其他与健康相关行为和结果的持久性呈负相关。建筑环境等健康的结构决定因素可以影响人口健康。我们的研究表明,较高水平的城市发展对健康的影响混合,并增加了社会经济困扰对多种身心健康结果产生不利影响的进一步证据。

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