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调整移民数据集的结局风险因素:总效应还是直接效应?

Adjusting for outcome risk factors in immigrant datasets: total or direct effects?

机构信息

Faculty of Health and Social Sciences, Western Norway University of Applied Sciences, Bergen, Norway.

Department of Global Public Health and Primary Care, University of Bergen, Bergen, Norway.

出版信息

BMC Med Res Methodol. 2023 Feb 10;23(1):37. doi: 10.1186/s12874-023-01861-4.

Abstract

BACKGROUND

When quantifying differences in health outcomes between immigrants and non-immigrants, it is common practice to adjust for observed differences in outcome risk factors between the groups being compared. However, as some of these outcome risk factors may act as mediators on the causal path between the exposure and outcome, adjusting for these may remove effects of factors that characterize the immigrants rather than removing a bias between immigrants and non-immigrants.

METHODS

This study investigates the underlying conditions for which adjusting for outcome risk factors in regression models can lead to the estimation of either total or direct effect for the difference in health outcomes between immigrants and non-immigrants. For this investigation, we use modern tools in causal inference to construct causal models that we believe are highly relevant in an immigrant dataset. In these models, the outcome risk factor is modeled either as a mediator, a selection factor, or a combined mediator/selection factor. Unlike mediators, selection factors are variables that affect the probability of being in the immigrant dataset and may contribute to a bias when comparing immigrants and non-immigrants.

RESULTS

When the outcome risk factor acts both as a mediator and selection factor, the adjustment for the risk factor in regression models leads to the estimation of what is known as a "controlled" direct effect. When the outcome risk factor is either a selection factor or a mediator alone, the adjustment for the risk factor in regression models leads to the estimation of a total effect or a controlled direct effect, respectively. In all regression analyses, also adjusting for various confounding paths, including mediator-outcome confounding, may be necessary to obtain valid controlled direct effects or total effects.

CONCLUSIONS

Depending on the causal role of the outcome risk factors in immigrant datasets, regression adjustment for these may result in the estimation of either total effects or controlled direct effects for the difference in outcomes between immigrants and non-immigrants. Because total and controlled direct effects are interpreted differently, we advise researchers to clarify to the readers which types of effects are presented when adjusting for outcome risk factors in immigrant datasets.

摘要

背景

在量化移民与非移民之间健康结果差异时,通常的做法是调整两组比较人群中观察到的结果风险因素差异。然而,由于这些结果风险因素中的一些可能是暴露与结果之间因果关系的中介因素,因此调整这些因素可能会消除一些移民特征因素的影响,而不是消除移民与非移民之间的偏差。

方法

本研究调查了在回归模型中调整结果风险因素可能导致对移民与非移民健康结果差异的总效应或直接效应估计的基本条件。为此,我们使用因果推断的现代工具构建我们认为在移民数据集中高度相关的因果模型。在这些模型中,结果风险因素被建模为中介因素、选择因素或中介/选择因素的组合。与中介因素不同,选择因素是影响处于移民数据集概率的变量,并且在比较移民和非移民时可能会导致偏差。

结果

当结果风险因素既作为中介因素又作为选择因素时,在回归模型中调整风险因素会导致对所谓“控制”直接效应的估计。当结果风险因素是选择因素或仅为中介因素时,在回归模型中调整风险因素会分别导致总效应或控制直接效应的估计。在所有回归分析中,还需要调整各种混杂路径,包括中介-结果混杂,以获得有效的控制直接效应或总效应。

结论

根据结果风险因素在移民数据集中的因果作用,对这些因素进行回归调整可能会导致对移民与非移民之间结果差异的总效应或控制直接效应的估计。由于总效应和控制直接效应的解释不同,我们建议研究人员向读者澄清在调整移民数据集中的结果风险因素时呈现的是哪种类型的效应。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/96c4/9912500/3cd486772ddd/12874_2023_1861_Fig1_HTML.jpg

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