首页> 外文期刊>Journal of the Royal Statistical Society. Series A, Statistics in Society >Hierarchical related regression for combining aggregate and individual data in studies of socio-economic disease risk factors
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Hierarchical related regression for combining aggregate and individual data in studies of socio-economic disease risk factors

机译:在社会经济疾病风险因素研究中结合汇总数据和个人数据的层次相关回归

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摘要

To obtain information about the contribution of individual and area level factors to population health, it is desirable to use both data collected on areas, such as censuses, and on individuals, e.g. survey and cohort data. Recently developed models allow us to carry out simultaneous regressions on related data at the individual and aggregate levels. These can reduce 'ecological bias' that is caused by confounding, model misspecification or lack of information and increase power compared with analysing the data sets singly. We use these methods in an application investigating individual and area level sociodemographic predictors of the risk of hospital admissions for heart and circulatory disease in London. We discuss the practical issues that are encountered in this kind of data synthesis and demonstrate that this modelling framework is sufficiently flexible to incorporate a wide range of sources of data and to answer substantive questions. Our analysis shows that the variations that are observed are mainly attributable to individual level factors rather than the contextual effect of deprivation.
机译:为了获得有关个人因素和地区因素对人口健康的贡献的信息,理想的是既使用诸如普查之类的区域数据,又使用诸如人口普查等有关个人的数据。调查和同类群组数据。最近开发的模型使我们能够在单个和总体级别上对相关数据进行同时回归。与单独分析数据集相比,这些方法可以减少由于混淆,模型规格不正确或信息不足而引起的“生态偏差”,并提高功能。我们在调查伦敦地区因心脏病和循环系统疾病住院的个人和地区社会人口统计学预测指标的应用中使用了这些方法。我们讨论了在这种数据综合中遇到的实际问题,并证明此建模框架具有足够的灵活性,可以合并各种数据源并回答实质性问题。我们的分析表明,观察到的差异主要归因于个人层面的因素,而不是剥夺的背景影响。

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