Department of Biomedical Informatics and Medical Education, University of Washington, Seattle, WA, United States.
Department of Epidemiology, Hans Rosling Center for Population Health, University of Washington, Seattle, WA, United States.
JMIR Form Res. 2024 Oct 4;8:e56510. doi: 10.2196/56510.
The environment shapes health behaviors and outcomes. Studies exploring this influence have been limited to research groups with the geographic information systems expertise required to develop built and social environment measures (eg, groups that include a researcher with geographic information system expertise).
The goal of this study was to develop an open-source, user-friendly, and privacy-preserving tool for conveniently linking built, social, and natural environmental variables to study participant addresses.
We built the automatic context measurement tool (ACMT). The ACMT comprises two components: (1) a geocoder, which identifies a latitude and longitude given an address (currently limited to the United States), and (2) a context measure assembler, which computes measures from publicly available data sources linked to a latitude and longitude. ACMT users access both of these components using an RStudio/RShiny-based web interface that is hosted within a Docker container, which runs on a local computer and keeps user data stored in local to protect sensitive data. We illustrate ACMT with 2 use cases: one comparing population density patterns within several major US cities, and one identifying correlates of cannabis licensure status in Washington State.
In the population density analysis, we created a line plot showing the population density (x-axis) in relation to distance from the center of the city (y-axis, using city hall location as a proxy) for Seattle, Los Angeles, Chicago, New York City, Nashville, Houston, and Boston with the distances being 1000, 2000, 3000, 4000, and 5000 m. We found the population density tended to decrease as distance from city hall increased except for Nashville and Houston, 2 cities that are notably more sprawling than the others. New York City had a significantly higher population density than the others. We also observed that Los Angeles and Seattle had similarly low population densities within up to 2500 m of City Hall. In the cannabis licensure status analysis, we gathered neighborhood measures such as age, sex, commute time, and education. We found the strongest predictive characteristic of cannabis license approval to be the count of female children aged 5 to 9 years and the proportion of females aged 62 to 64 years who were not in the labor force. However, after accounting for Bonferroni error correction, none of the measures were significantly associated with cannabis retail license approval status.
The ACMT can be used to compile environmental measures to study the influence of environmental context on population health. The portable and flexible nature of ACMT makes it optimal for neighborhood study research seeking to attribute environmental data to specific locations within the United States.
环境塑造了健康行为和结果。探索这种影响的研究仅限于具有开发建筑和社会环境措施所需的地理信息系统专业知识的研究小组(例如,包括具有地理信息系统专业知识的研究人员的小组)。
本研究的目的是开发一种开源、用户友好且保护隐私的工具,方便将建筑、社会和自然环境变量与研究参与者的地址联系起来。
我们构建了自动上下文测量工具(ACMT)。ACMT 由两个组件组成:(1)一个地理编码器,它根据地址确定纬度和经度(目前仅限于美国),(2)一个上下文测量组件,它根据与纬度和经度相关联的公共数据源计算测量值。ACMT 用户通过使用基于 RStudio/RShiny 的网络界面访问这两个组件,该界面托管在 Docker 容器中,在本地计算机上运行,并将用户数据存储在本地以保护敏感数据。我们用两个用例说明了 ACMT:一个是比较几个美国主要城市的人口密度模式,另一个是确定华盛顿州大麻许可证状态的相关因素。
在人口密度分析中,我们创建了一个线图,显示了人口密度(x 轴)与距离城市中心(y 轴,使用市政厅位置作为代理)的关系,对于西雅图、洛杉矶、芝加哥、纽约市、纳什维尔、休斯顿和波士顿,距离分别为 1000、2000、3000、4000 和 5000 米。我们发现,除了纳什维尔和休斯顿这两个明显比其他城市更分散的城市外,人口密度随着距离市政厅的增加而趋于下降。纽约市的人口密度明显高于其他城市。我们还观察到,在距离市政厅 2500 米范围内,洛杉矶和西雅图的人口密度相似。在大麻许可证状态分析中,我们收集了邻里措施,如年龄、性别、通勤时间和教育程度。我们发现,批准大麻许可证的最强预测特征是 5 至 9 岁的女性儿童数量和 62 至 64 岁未就业女性的比例。然而,在考虑了 Bonferroni 错误校正后,没有一个措施与大麻零售许可证批准状态显著相关。
ACMT 可用于编制环境措施,以研究环境背景对人口健康的影响。ACMT 的便携性和灵活性使其成为在美国特定地点归因环境数据的邻里研究的理想选择。