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美国街道景观图像衍生的居住环境指标与邻里的种族和民族构成及历史红线的关联

Association of Neighborhood Racial and Ethnic Composition and Historical Redlining With Built Environment Indicators Derived From Street View Images in the US.

机构信息

Center for Antiracist Research, Boston University, Boston, Massachusetts.

Department of Political Science, Boston University, Boston, Massachusetts.

出版信息

JAMA Netw Open. 2023 Jan 3;6(1):e2251201. doi: 10.1001/jamanetworkopen.2022.51201.

Abstract

IMPORTANCE

Racist policies (such as redlining) create inequities in the built environment, producing racially and ethnically segregated communities, poor housing conditions, unwalkable neighborhoods, and general disadvantage. Studies on built environment disparities are usually limited to measures and data that are available from existing sources or can be manually collected.

OBJECTIVE

To use built environment indicators generated from online street-level images to investigate the association among neighborhood racial and ethnic composition, the built environment, and health outcomes across urban areas in the US.

DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study was conducted using built environment indicators derived from 164 million Google Street View images collected from November 1 to 30, 2019. Race, ethnicity, and socioeconomic data were obtained from the 2019 American Community Survey (ACS) 5-year estimates; health outcomes were obtained from the Centers for Disease Control and Prevention 2020 Population Level Analysis and Community Estimates (PLACES) data set. Multilevel modeling and mediation analysis were applied. A total of 59 231 urban census tracts in the US were included. The online images and the ACS data included all census tracts. The PLACES data comprised survey respondents 18 years or older. Data were analyzed from May 23 to November 16, 2022.

MAIN OUTCOMES AND MEASURES

Model-estimated association between image-derived built environment indicators and census tract (neighborhood) racial and ethnic composition, and the association of the built environment with neighborhood racial composition and health.

RESULTS

The racial and ethnic composition in the 59 231 urban census tracts was 1 160 595 (0.4%) American Indian and Alaska Native, 53 321 345 (19.5%) Hispanic, 462 259 (0.2%) Native Hawaiian and other Pacific Islander, 17 166 370 (6.3%) non-Hispanic Asian, 35 985 480 (13.2%) non-Hispanic Black, and 158 043 260 (57.7%) non-Hispanic White residents. Compared with other neighborhoods, predominantly White neighborhoods had fewer dilapidated buildings and more green space indicators, usually associated with good health, and fewer crosswalks (eg, neighborhoods with predominantly minoritized racial or ethnic groups other than Black residents had 6% more dilapidated buildings than neighborhoods with predominantly White residents). Moreover, the built environment indicators partially mediated the association between neighborhood racial and ethnic composition and health outcomes, including diabetes, asthma, and sleeping problems. The most significant mediator was non-single family homes (a measure associated with homeownership), which mediated the association between neighborhoods with predominantly minority racial or ethnic groups other than Black residents and sleeping problems by 12.8% and the association between unclassified neighborhoods and asthma by 24.2%.

CONCLUSIONS AND RELEVANCE

The findings in this cross-sectional study suggest that large geographically representative data sets, if used appropriately, may provide novel insights on racial and ethnic health inequities. Quantifying the impact of structural racism on social determinants of health is one step toward developing policies and interventions to create equitable built environment resources.

摘要

重要性

种族主义政策(如红线政策)在建筑环境中造成了不平等,导致了种族和族裔隔离的社区、恶劣的住房条件、无法步行的社区以及普遍的劣势。关于建筑环境差异的研究通常仅限于现有来源提供的或可以手动收集的措施和数据。

目的

利用从在线街景图像中生成的建筑环境指标,调查美国城市地区社区种族和族裔构成、建筑环境与健康结果之间的关联。

设计、设置和参与者:这项横断面研究使用了从 2019 年 11 月 1 日至 30 日收集的 1.64 亿张谷歌街景图像中提取的建筑环境指标。种族、族裔和社会经济数据来自 2019 年美国社区调查(ACS)5 年估计数;健康结果来自疾病控制与预防中心 2020 年人口水平分析和社区估计(PLACES)数据集。应用了多水平建模和中介分析。包括美国 59231 个城市普查区。在线图像和 ACS 数据包括所有普查区。PLACES 数据包括 18 岁或以上的调查受访者。数据于 2022 年 5 月 23 日至 11 月 16 日进行分析。

主要结果和措施

模型估计的图像衍生建筑环境指标与普查区(邻里)种族和族裔构成之间的关联,以及建筑环境与邻里种族构成和健康之间的关联。

结果

59231 个城市普查区的种族和族裔构成如下:1160595 名(0.4%)美洲印第安人和阿拉斯加原住民,53321345 名(19.5%)西班牙裔,462259 名(0.2%)夏威夷原住民和其他太平洋岛民,17166370 名(6.3%)非西班牙裔亚裔,35985480 名(13.2%)非西班牙裔黑人,和 158043260 名(57.7%)非西班牙裔白人居民。与其他社区相比,以白人为主的社区破旧建筑较少,绿色空间指标通常与良好的健康状况相关,而横道线较少(例如,以非黑人少数族裔为主的社区破旧建筑比以白人为主的社区多 6%)。此外,建筑环境指标部分中介了社区种族和族裔构成与健康结果之间的关联,包括糖尿病、哮喘和睡眠问题。最重要的中介是非独户住宅(与住房所有权相关的指标),它通过 12.8%中介了以非黑人少数族裔为主的社区与睡眠问题之间的关联,通过 24.2%中介了未分类社区与哮喘之间的关联。

结论和相关性

这项横断面研究的结果表明,如果使用得当,大型具有代表性的地理数据集可能会提供关于种族和族裔健康不平等的新见解。量化结构性种族主义对健康决定因素的影响是制定政策和干预措施以创造公平的建筑环境资源的一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7e5/9856713/6effe74730e2/jamanetwopen-e2251201-g001.jpg

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