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加权中处理工具变量的建模与平衡方法:结果自适应套索法、稳定平衡加权法和稳定混杂因素选择法的比较

Modeling Versus Balancing Approaches to Addressing Instrumental Variables in Weighting: A Comparison of the Outcome-Adaptive Lasso, Stable Balancing Weighting, and Stable Confounder Selection.

作者信息

Choi Byeong Yeob, Brookhart M Alan

机构信息

Department of Population Health Sciences, UT Health San Antonio, San Antonio, Texas, USA.

Department of Population Health Sciences, Duke University, Durham, North Carolina, USA.

出版信息

Pharmacoepidemiol Drug Saf. 2025 Jul;34(7):e70173. doi: 10.1002/pds.70173.

Abstract

BACKGROUND

Variable selection is essential for propensity score (PS)-weighted estimators. Recent work shows that including instrumental variables (IVs), associated with only treatment but not with the outcome, can impact both the bias and precision of the PS-weighted estimators.

METHODS

The outcome-adaptive lasso (OAL) is an innovative model-based method adapting the popular adaptive lasso variable selection to causal inference. It attempts to identify IVs, so one can exclude them from the PS model. Unlike the model-based approach, stable balancing weighting (SBW) estimates inverse probability weights directly while minimizing the variance of the weights and covariate imbalance simultaneously. Based on its variance optimization algorithm, SBW may provide some protection against the impact of IVs. Lastly, we considered stable confounder selection (SCS), which assesses the stability of model-based effect estimates.

RESULTS

The authors present the results of simulation studies to investigate which method performs the best when moderate or strong IVs are used. The simulation studies consider IVs and spurious variables to generate extreme PSs. In simulations, SBW generally outperformed OAL and SCS in terms of reducing mean squared error, notably when the IVs were strong, and many covariates were highly correlated. Our empirical application to the effect of abciximab treatment demonstrates that SBW is a robust method to effectively handle limited overlap.

CONCLUSIONS

Our numerical results support the use of SBW in situations where IVs or near-IVs may lead to practical violations of positivity assumptions.

摘要

背景

变量选择对于倾向得分(PS)加权估计器至关重要。近期研究表明,纳入仅与治疗相关而与结局无关的工具变量(IV)会影响PS加权估计器的偏差和精度。

方法

结局自适应套索(OAL)是一种基于模型的创新方法,它将流行的自适应套索变量选择应用于因果推断。它试图识别IV,以便可以将其从PS模型中排除。与基于模型的方法不同,稳定平衡加权(SBW)直接估计逆概率权重,同时最小化权重的方差和协变量不平衡。基于其方差优化算法,SBW可能会提供一些保护,以抵御IV的影响。最后,我们考虑了稳定混杂因素选择(SCS),它评估基于模型的效应估计的稳定性。

结果

作者展示了模拟研究的结果,以调查在使用中度或强IV时哪种方法表现最佳。模拟研究考虑了IV和虚假变量以生成极端PS。在模拟中,就降低均方误差而言,SBW通常优于OAL和SCS,特别是当IV很强且许多协变量高度相关时。我们对阿昔单抗治疗效果的实证应用表明,SBW是一种有效处理有限重叠的稳健方法。

结论

我们的数值结果支持在IV或近似IV可能导致实际违反正性假设的情况下使用SBW。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/393c/12203767/41d1fc02e3ab/PDS-34-e70173-g006.jpg

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