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量化邻里特征及其与心理健康不良关联的潜在变量。

Latent Variables Quantifying Neighborhood Characteristics and Their Associations with Poor Mental Health.

机构信息

Laureate Institute for Brain Research, 6655 South Yale Avenue, Tulsa, OK 74136, USA.

Department of Mathematics, College of Engineering & Natural Sciences, The University of Tulsa, 800 South Tucker Drive, Tulsa, OK 74104, USA.

出版信息

Int J Environ Res Public Health. 2021 Jan 29;18(3):1202. doi: 10.3390/ijerph18031202.

Abstract

Neighborhood characteristics can have profound impacts on resident mental health, but the wide variability in methodologies used across studies makes it difficult to reach a consensus as to the implications of these impacts. The aim of this study was to simplify the assessment of neighborhood influence on mental health. We used a factor analysis approach to reduce the multi-dimensional assessment of a neighborhood using census tracts and demographic data available from the American Community Survey (ACS). Multivariate quantitative characterization of the neighborhood was derived by performing a factor analysis on the 2011-2015 ACS data. The utility of the latent variables was examined by determining the association of these factors with poor mental health measures from the 500 Cities Project 2014-2015 data (2017 release). A five-factor model provided the best fit for the data. Each factor represents a complex multi-dimensional construct. However, based on heuristics and for simplicity we refer to them as (1) Affluence, (2) Singletons in Tract, (3) African Americans in Tract, (4) Seniors in Tract, and (5) Hispanics or Latinos in Tract. African Americans in Tract (with loadings showing larger numbers of people who are black, single moms, and unemployed along with fewer people who are white) and Affluence (with loadings showing higher income, education, and home value) were strongly associated with poor mental health (R2=0.67, R2=0.83). These findings demonstrate the utility of this factor model for future research focused on the relationship between neighborhood characteristics and resident mental health.

摘要

社区特征对居民的心理健康有深远的影响,但由于研究中使用的方法存在很大差异,因此难以就这些影响的意义达成共识。本研究旨在简化对社区对心理健康影响的评估。我们使用因子分析方法,利用美国社区调查(ACS)中的普查区和人口统计数据,对社区的多维评估进行简化。通过对 2011-2015 年 ACS 数据进行因子分析,得出社区的多变量定量特征。通过确定这些因素与 2014-2015 年 500 个城市项目(2017 年发布)的不良心理健康指标之间的关联,来检验潜在变量的实用性。五项因素模型最适合该数据。每个因素都代表一个复杂的多维结构。但是,基于启发式和简单性,我们将它们称为(1)富裕程度,(2)普查区中的单身人士,(3)普查区中的非裔美国人,(4)普查区中的老年人,以及(5)普查区中的西班牙裔或拉丁裔。普查区中的非裔美国人(其负荷显示黑人、单身母亲和失业人数较多,而白人人数较少)和富裕程度(其负荷显示收入、教育程度和房屋价值较高)与不良心理健康密切相关(R2=0.67,R2=0.83)。这些发现表明,该因子模型在未来关注社区特征与居民心理健康之间关系的研究中具有实用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7270/7908478/db30809d5d40/ijerph-18-01202-g001.jpg

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