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在研究中使用威尔士多重贫困指数:评估在一项常规健康数据研究中排除各领域的影响。

Using the Welsh Index of Multiple Deprivation in research: estimating the effect of excluding domains on a routine health data study.

作者信息

Mohammed Shamsudeen, Bailey Grace A, Farr Ian W, Jones Carys, Rawlings Anna, Rees Sarah, Scully Sean, Wang Ting, Evans Hywel T

机构信息

SAIL Databank, Population Data Science, Swansea University Medical School, Swansea University, Swansea, Wales.

出版信息

BMC Public Health. 2025 Mar 28;25(1):1178. doi: 10.1186/s12889-025-22369-0.

Abstract

BACKGROUND

The Welsh Index of Multiple Deprivation (WIMD) is an area-based deprivation measure comprising eight domains, produced by the Welsh Government to rank Lower Layer Super Output Areas (LSOAs) in Wales. Researchers use the WIMD to account for deprivation, however, as one domain contains health indicators, there is a risk of endogeneity bias when using the WIMD in research on health outcomes. This study evaluated the effect on study results of removing the health domain from the overall WIMD or using only the income domain as deprivation measures.

METHODS

WIMD 2019 scores were linked to 2,760,731 individuals in the SAIL Databank. Original WIMD scores including decile and quintile rankings for each LSOA 2011 were obtained from Welsh Government. The first alternative method removed the health domain from the original WIMD scores. In the second alternative method, WIMD scores were based on only the income domain. Spearman's correlation and Cohen's kappa were used to assess the agreement of ranks, deciles, and quintiles between each method. To quantify the change in association between WIMD quintile and diabetes mellitus prevalence for each alternative method, binary logistic regression obtained age-adjusted odds ratios and 95% confidence intervals.

RESULTS

Removing the health domain from the original WIMD scores resulted in 17.28% of LSOAs changing decile (8.64% to a more deprived group and 8.64% to a less deprived group) and 9.00% changing quintile (4.50% more deprived, 4.50% less deprived). The income-domain-only method caused 50.49% of LSOAs to change decile (26.87% more deprived, 23.62% less deprived) as compared with the original WIMD, and 29.65% changed quintile (15.14% more deprived, 14.51% less deprived). There was a significant association between each of the three methods and diabetes prevalence, with odds ratios increasing with more deprived quintiles, but the 95% confidence intervals for each method showed little or no overlap with each other.

CONCLUSION

To avoid biased estimates, researchers using WIMD in studies on health, education, housing, physical environment, income, employment, community safety, and access to services should consider how these domains are related to their outcomes. We describe a methodology for researchers to quantify any bias in their own studies.

摘要

背景

威尔士多重剥夺指数(WIMD)是一种基于区域的剥夺度量指标,由威尔士政府编制,包含八个领域,用于对威尔士的低层超级输出区(LSOA)进行排名。研究人员使用WIMD来衡量剥夺情况,然而,由于其中一个领域包含健康指标,在健康结果研究中使用WIMD时存在内生性偏差的风险。本研究评估了从整体WIMD中去除健康领域或仅使用收入领域作为剥夺度量指标对研究结果的影响。

方法

将2019年WIMD分数与SAIL数据库中的2760731个人相链接。2011年每个LSOA的原始WIMD分数,包括十分位数和五分位数排名,均来自威尔士政府。第一种替代方法是从原始WIMD分数中去除健康领域。第二种替代方法中,WIMD分数仅基于收入领域。使用斯皮尔曼相关性和科恩kappa系数来评估每种方法之间的排名、十分位数和五分位数的一致性。为了量化每种替代方法中WIMD五分位数与糖尿病患病率之间关联的变化,二元逻辑回归得出年龄调整后的比值比和95%置信区间。

结果

从原始WIMD分数中去除健康领域导致17.28%的LSOA改变了十分位数(8.64%变为更贫困组,8.64%变为较不贫困组),9.00%改变了五分位数(4.50%更贫困,4.50%较不贫困)。仅使用收入领域的方法与原始WIMD相比,导致50.49%的LSOA改变了十分位数(26.87%更贫困,23.62%较不贫困),29.65%改变了五分位数(15.14%更贫困,14.51%较不贫困)。三种方法中的每一种与糖尿病患病率之间均存在显著关联,随着贫困五分位数的增加,比值比也增加,但每种方法的95%置信区间彼此之间几乎没有重叠或没有重叠。

结论

为避免有偏差的估计,在健康、教育、住房、物理环境、收入、就业、社区安全和服务可及性研究中使用WIMD的研究人员应考虑这些领域与他们的研究结果之间的关系。我们为研究人员描述了一种方法,用于量化他们自己研究中的任何偏差。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f8d1/11951554/20c1a58b2816/12889_2025_22369_Fig1_HTML.jpg

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