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首页> 外文期刊>Journal of the Royal Statistical Society. Series A, Statistics in Society >Multiple-bias modelling for analysis of observational data
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Multiple-bias modelling for analysis of observational data

机译:用于观测数据分析的多偏差建模

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摘要

Conventional analytic results do not reflect any source of uncertainty other than random error, and as a result readers must rely on informal judgments regarding the effect of possible biases. When standard errors are small these judgments often fail to capture sources of uncertainty and their interactions adequately. Multiple-bias models provide alternatives that allow one systematically to integrate major sources of uncertainty, and thus to provide better input to research planning and policy analysis. Typically, the bias parameters in the model are not identified by the analysis data and so the results depend completely on priors for those parameters. A Bayesian analysis is then natural, but several alternatives based on sensitivity analysis have appeared in the risk assessment and epidemiologic literature. Under some circumstances these methods approximate a Bayesian analysis and can be modified to do so even better. These points are illustrated with a pooled analysis of case-control studies of residential magnetic field exposure and childhood leukaemia, which highlights the diminishing value of conventional studies conducted after the early 1990s. It is argued that multiple-bias modelling should become part of the core training of anyone who will be entrusted with the analysis of observational data, and should become standard procedure when random error is not the only important source of uncertainty (as in meta-analysis and pooled analysis).
机译:常规分析结果除了随机误差外,不反映任何不确定性来源,因此,读者必须依赖有关可能偏差影响的非正式判断。当标准误差较小时,这些判断通常无法捕获不确定性及其相互影响的来源。多重偏差模型提供了可供选择的方案,使人们可以系统地整合不确定性的主要来源,从而为研究计划和政策分析提供更好的输入。通常,分析数据无法识别模型中的偏差参数,因此结果完全取决于这些参数的先验条件。贝叶斯分析是很自然的,但是在风险评估和流行病学文献中已经出现了几种基于敏感性分析的方法。在某些情况下,这些方法可以近似贝叶斯分析,并且可以进行改进以使其更好。通过对居住场所磁场暴露和儿童白血病的病例对照研究进行汇总分析,可以说明这些问题,这突显了1990年代初以后进行的常规研究的价值递减。有人认为,多偏倚建模应成为将要委托观察数据分析的任何人的核心培训的一部分,并且当随机误差不是唯一不确定性的唯一重要来源时(如在荟萃分析中),多偏斜建模应成为标准程序。并汇总分析)。

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