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在倾向得分分析中,缺失混杂因素的大小和方向对治疗效果估计有不同的影响。

Magnitude and direction of missing confounders had different consequences on treatment effect estimation in propensity score analysis.

作者信息

Nguyen Tri-Long, Collins Gary S, Spence Jessica, Fontaine Charles, Daurès Jean-Pierre, Devereaux Philip J, Landais Paul, Le Manach Yannick

机构信息

Laboratory of Biostatistics, Epidemiology, Clinical Research and Health Economics, UPRES EA 2415, Montpellier University, Montpellier, France; Department of Anesthesia, Michael DeGroote School of Medicine, Faculty of Health Sciences, McMaster University, Hamilton, Canada; Department of Clinical Epidemiology and Biostatistics, Michael DeGroote School of Medicine, Faculty of Health Sciences, McMaster University, Hamilton, Canada; Population Health Research Institute, David Braley Cardiac, Vascular and Stroke Research Institute, Perioperative Medicine and Surgical Research Unit, Hamilton, Canada.

Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, Botnar Research Centre, University of Oxford, Windmill Road, Oxford, UK.

出版信息

J Clin Epidemiol. 2017 Jul;87:87-97. doi: 10.1016/j.jclinepi.2017.04.001. Epub 2017 Apr 12.

Abstract

OBJECTIVE

Propensity score (PS) analysis allows an unbiased estimate of treatment effects but assumes that all confounders are measured. We assessed the impact of omitting confounders from a PS analysis on clinical decision making.

STUDY DESIGN AND SETTING

We conducted Monte Carlo simulations on hypothetical observational studies based on virtual populations and on the population from a large randomized trial (CRASH-2). In both series of simulations, PS analysis was conducted with all confounders and with omitted confounders, which were defined to have different strengths of association with the outcome and treatment exposure. After inverse probability of treatment weighting, we calculated the absolute risk differences and numbers needed to treat (NNT).

RESULTS

In both series of simulations, omitting a confounder that was moderately associated with the outcome and exposure led to negligible bias on the NNT scale. The bias induced by omitting strongly positive confounding variables remained less than 15 patients to treat. Major bias and reversed effects were found only when omitting highly prevalent, strongly negative confounders that were similarly associated with the outcome and exposure with odds ratios greater than 4.00 (or <0.25). This omission was accompanied by a substantial decrease in analysis power.

CONCLUSION

The omission of strongly negative confounding variables from a PS analysis can lead to incorrect clinical decision making. However, omitting these variables also decreases the analysis power, which may prevent the reporting of significant but misleading effects.

摘要

目的

倾向评分(PS)分析可对治疗效果进行无偏估计,但假定所有混杂因素均已测量。我们评估了在PS分析中遗漏混杂因素对临床决策的影响。

研究设计与背景

我们基于虚拟人群以及一项大型随机试验(CRASH-2)的人群,对假设的观察性研究进行了蒙特卡洛模拟。在这两个系列的模拟中,PS分析分别纳入所有混杂因素以及遗漏部分混杂因素的情况,这些遗漏的混杂因素被定义为与结局和治疗暴露具有不同强度的关联。在进行治疗权重的逆概率分析后,我们计算了绝对风险差异和需治疗人数(NNT)。

结果

在这两个系列的模拟中,遗漏一个与结局和暴露中度相关的混杂因素,在NNT尺度上导致的偏差可忽略不计。遗漏强正向混杂变量所导致的偏差仍小于15名需治疗患者。仅在遗漏高度流行、强负向混杂因素时才发现主要偏差和反向效应,这些因素与结局和暴露同样相关,比值比大于4.00(或<0.25)。这种遗漏伴随着分析效能的大幅下降。

结论

在PS分析中遗漏强负向混杂变量可能导致错误的临床决策。然而,遗漏这些变量也会降低分析效能,这可能会阻止报告显著但具有误导性的效应。

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