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Invited commentary: understanding bias amplification.

机译:特邀评论:了解偏见放大。

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摘要

In choosing covariates for adjustment or inclusion in propensity score analysis, researchers must weigh the benefit of reducing confounding bias carried by those covariates against the risk of amplifying residual bias carried by unmeasured confounders. The latter is characteristic of covariates that act like instrumental variables-that is, variables that are more strongly associated with the exposure than with the outcome. In this issue of the Journal (Am J Epidemiol. 2011;174(11):1213-1222), Myers et al. compare the bias amplification of a near-instrumental variable with its bias-reducing potential and suggest that, in practice, the latter outweighs the former. The author of this commentary sheds broader light on this comparison by considering the cumulative effects of conditioning on multiple covariates and showing that bias amplification may build up at a faster rate than bias reduction. The author further derives a partial order on sets of covariates which reveals preference for conditioning on outcome-related, rather than exposure-related, confounders.
机译:在选择要调整或包含在倾向得分分析中的协变量时,研究人员必须权衡降低那些协变量带来的混淆偏差与放大未测混杂因素所带来的残余偏差的风险之间的关系。后者是像工具变量一样起作用的协变量的特征,即与暴露比与结果更紧密相关的变量。在本期杂志(Am J Epidemiol。2011; 174(11):1213-1222)中,Myers等人。将近仪器变量的偏差放大与其降低偏差的潜力进行了比较,并建议在实践中,后者要比前者更大。该评论的作者通过考虑条件对多个协变量的累积影响,并显示出偏差放大的建立速率可能比偏差减小的速率更快,从而为这种比较提供了更广阔的思路。作者进一步推导了一组协变量的偏序,该偏序揭示了优先选择与结果相关而不是与暴露相关的混杂因素的条件。

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