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利用卷积神经网络从谷歌街景图像中提取邻里建成环境并研究其与健康结果的关系。

Using Convolutional Neural Networks to Derive Neighborhood Built Environments from Google Street View Images and Examine Their Associations with Health Outcomes.

机构信息

Department of Epidemiology and Biostatistics, University of Maryland School of Public Health, College Park, MD 20742, USA.

Walt Whitman High School, Bethesda, MD 20817, USA.

出版信息

Int J Environ Res Public Health. 2022 Sep 24;19(19):12095. doi: 10.3390/ijerph191912095.

Abstract

Built environment neighborhood characteristics are difficult to measure and assess on a large scale. Consequently, there is a lack of sufficient data that can help us investigate neighborhood characteristics as structural determinants of health on a national level. The objective of this study is to utilize publicly available Google Street View images as a data source for characterizing built environments and to examine the influence of built environments on chronic diseases and health behaviors in the United States. Data were collected by processing 164 million Google Street View images from November 2019 across the United States. Convolutional Neural Networks, a class of multi-layer deep neural networks, were used to extract features of the built environment. Validation analyses found accuracies of 82% or higher across neighborhood characteristics. In regression analyses controlling for census tract sociodemographics, we find that single-lane roads (an indicator of lower urban development) were linked with chronic conditions and worse mental health. Walkability and urbanicity indicators such as crosswalks, sidewalks, and two or more cars were associated with better health, including reduction in depression, obesity, high blood pressure, and high cholesterol. Street signs and streetlights were also found to be associated with decreased chronic conditions. Chain link fence (physical disorder indicator) was generally associated with poorer mental health. Living in neighborhoods with a built environment that supports social interaction and physical activity can lead to positive health outcomes. Computer vision models using manually annotated Google Street View images as a training dataset were able to accurately identify neighborhood built environment characteristics. These methods increases the feasibility, scale, and efficiency of neighborhood studies on health.

摘要

建筑环境邻里特征难以大规模测量和评估。因此,缺乏足够的数据来帮助我们在全国范围内将邻里特征作为健康的结构决定因素进行研究。本研究的目的是利用公共可用的谷歌街景图像作为描述建筑环境的数据源,并研究建筑环境对美国慢性病和健康行为的影响。数据是通过 2019 年 11 月在美国各地处理 1.64 亿张谷歌街景图像收集的。卷积神经网络是一类多层深度神经网络,用于提取建筑环境的特征。验证分析发现,邻里特征的准确率在 82%或更高。在控制人口普查区社会人口统计学因素的回归分析中,我们发现单车道(城市发展水平较低的指标)与慢性病和心理健康状况较差有关。可步行性和城市化指标,如横道线、人行道和两辆车或更多的车辆与更好的健康状况相关,包括减少抑郁、肥胖、高血压和高胆固醇。交通标志和路灯也与慢性病减少有关。链式围栏(物理障碍指标)通常与较差的心理健康有关。生活在支持社交互动和身体活动的建筑环境的社区中,可能会带来积极的健康结果。使用人工标注的谷歌街景图像作为训练数据集的计算机视觉模型能够准确识别邻里建筑环境特征。这些方法提高了健康邻里研究的可行性、规模和效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7a8e/9564970/63760ef9824d/ijerph-19-12095-g001.jpg

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