Exploring the use of experimental small area estimates to examine the relationship between individual-level and area-level community belonging and self-rated health.

IF 2.7 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Health Reports Pub Date : 2024-03-20 DOI:10.25318/82-003-x202400300001-eng
Sarah M Mah, Mark Brown, Rachel C Colley, Laura C Rosella, Grant Schellenberg, Claudia Sanmartin
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Abstract

Background: Small area estimation refers to statistical modelling procedures that leverage information or "borrow strength" from other sources or variables. This is done to enhance the reliability of estimates of characteristics or outcomes for areas that do not contain sufficient sample sizes to provide disaggregated estimates of adequate precision and reliability. There is growing interest in secondary research applications for small area estimates (SAEs). However, it is crucial to assess the analytic value of these estimates when used as proxies for individual-level characteristics or as distinct measures that offer insights at the area level. This study assessed novel area-level community belonging measures derived using small area estimation and examined associations with individual-level measures of community belonging and self-rated health.

Data and methods: SAEs of community belonging within census tracts produced from the 2016-2019 cycles of the Canadian Community Health Survey (CCHS) were merged with respondent data from the 2020 CCHS. Multinomial logistic regression models were run between area-level SAEs, individual-level sense of community belonging, and self-rated health on the study sample of people aged 18 years and older.

Results: Area-level community belonging was associated with individual-level community belonging, even after adjusting for individual-level sociodemographic characteristics, despite limited agreement between individual- and area-level measures. Living in a neighbourhood with low community belonging was associated with higher odds of reporting being in fair or poor health, versus being in very good or excellent health (odds ratio: 1.53; 95% confidence interval: 1.22, 1.91), even after adjusting for other factors such as individual-level sense of community belonging, which was also associated with self-rated health.

Interpretation: Area-level and individual-level sense of community belonging were independently associated with self-rated health. The novel SAEs of community belonging can be used as distinct measures of neighbourhood-level community belonging and should be understood as complementary to, rather than proxies for, individual-level measures of community belonging.

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探索使用实验性小地区估算来研究个人层面和地区层面的社区归属感与自评健康之间的关系。
背景:小区估算是指利用其他来源或变量的信息或 "借力 "的统计建模程序。这样做的目的是,在样本量不足以提供足够精确和可靠的分类估计值的地区,提高特征或结果估计值的可靠性。人们对小地区估算(SAE)的二次研究应用越来越感兴趣。然而,当这些估计值被用作个人层面特征的代用指标或在地区层面提供见解的独特测量指标时,评估其分析价值至关重要。本研究评估了利用小地区估算得出的新的地区级社区归属度量,并考察了与个人层面的社区归属度量和自我健康评价之间的关联:加拿大社区健康调查(CCHS)2016-2019年周期中产生的人口普查区内的社区归属感SAE与2020年CCHS的受访者数据进行了合并。在地区级 SAE、个人级社区归属感和 18 岁及以上研究样本的自评健康之间建立了多项式逻辑回归模型:结果:尽管个人和地区层面的测量结果之间的一致性有限,但地区层面的社区归属感与个人层面的社区归属感相关,即使在调整了个人层面的社会人口特征之后也是如此。居住在社区归属感较低的社区与报告健康状况一般或较差的几率比健康状况非常好或极好的几率高(几率比:1.53;95% 置信区间:1.22,1.91),即使在调整了其他因素(如个人层面的社区归属感)后也是如此,个人层面的社区归属感也与自评健康状况相关:解释:地区层面和个人层面的社区归属感与自评健康状况独立相关。新的社区归属感SAE可作为邻里层面社区归属感的独特衡量标准,应被理解为个人层面社区归属感衡量标准的补充,而非替代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Health Reports
Health Reports PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
7.30
自引率
4.00%
发文量
28
期刊介绍: Health Reports publishes original research on diverse topics related to understanding and improving the health of populations and the delivery of health care. We publish studies based on analyses of Canadian national/provincial representative surveys or Canadian national/provincial administrative databases, as well as results of international comparative health research. Health Reports encourages the sharing of methodological information among those engaged in the analysis of health surveys or administrative databases. Use of the most current data available is advised for all submissions.
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