Estimating causal effects for multivalued treatments: a comparison of approaches

被引:94
|
作者
Linden, Ariel [1 ,3 ]
Uysal, S. Derya [2 ]
Ryan, Andrew [3 ]
Adams, John L. [4 ]
机构
[1] Linden Consulting Grp LLC, 1301 North Bay Dr, Ann Arbor, MI 48103 USA
[2] IHS, Dept Econ & Finance, Vienna, Austria
[3] Univ Michigan, Sch Publ Hlth, Dept Hlth Management & Policy, Ann Arbor, MI 48109 USA
[4] Kaiser Permanente, Ctr Effectiveness & Safety Res, Pasadena, CA USA
关键词
multivalued treatments; regression adjustment; propensity score weighting; doubly robust; inverse probability weights; observational studies; DOUBLY ROBUST ESTIMATION; PROPENSITY-SCORE; DISEASE MANAGEMENT; MISSING DATA; STRATIFICATION; ADJUSTMENT; INFERENCE; MODELS; REGRESSION; EFFICIENT;
D O I
10.1002/sim.6768
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Interventions with multivalued treatments are common in medical and health research, such as when comparing the efficacy of competing drugs or interventions, or comparing between various doses of a particular drug. In recent years, there has been a growing interest in the development of multivalued treatment effect estimators using observational data. In this paper, we compare the performance of commonly used regression-based methods that estimate multivalued treatment effects based on the unconfoundedness assumption. These estimation methods fall into three general categories: (i) estimators based on a model for the outcome variable using conventional regression adjustment; (ii) weighted estimators based on a model for the treatment assignment; and (iii) 'doubly-robust' estimators that model both the treatment assignment and outcome variable within the same framework. We assess the performance of thesemodels using Monte Carlo simulation and demonstrate their application with empirical data. Our results show that (i) when models estimating both the treatment and outcome are correctly specified, all adjustment methods provide similar unbiased estimates; (ii) when the outcome model is misspecified, regression adjustment performs poorly, while all the weighting methods provide unbiased estimates; (iii) when the treatment model is misspecified, methods based solely on modeling the treatment perform poorly, while regression adjustment and the doubly robust models provide unbiased estimates; and (iv) when both the treatment and outcome models are misspecified, all methods perform poorly. Given that researchers will rarely know which of the two models is misspecified, our results support the use of doubly robust estimation. Copyright (C) 2015 John Wiley & Sons, Ltd.
引用
收藏
页码:534 / 552
页数:19
相关论文
共 50 条
  • [21] A semiparametric method for evaluating causal effects in the presence of error-prone covariates
    Liu, Jianxuan
    Li, Wei
    BIOMETRICAL JOURNAL, 2021, 63 (06) : 1202 - 1222
  • [22] Estimating Causal Effects of Multi-Valued Treatments Accounting for Network Interference: Immigration Policies and Crime Rates
    Tortu, Costanza
    Crimaldi, Irene
    Mealli, Fabrizia
    Forastiere, Laura
    SOCIOLOGICAL METHODS & RESEARCH, 2024, 53 (04) : 1794 - 1828
  • [23] Optimal probability weights for estimating causal effects of time-varying treatments with marginal structural Cox models
    Santacatterina, Michele
    Garcia-Pareja, Celia
    Bellocco, Rino
    Soennerborg, Anders
    Ekstrom, Anna Mia
    Bottai, Matteo
    STATISTICS IN MEDICINE, 2019, 38 (10) : 1891 - 1902
  • [24] Multivalued Treatments and Decomposition Analysis: An Application to the WIA Program
    Ao, Wallice
    Calonico, Sebastian
    Lee, Ying-Ying
    JOURNAL OF BUSINESS & ECONOMIC STATISTICS, 2021, 39 (01) : 358 - 371
  • [25] Estimating causal effects in observational studies for survival data with a cure fraction using propensity score adjustment
    Wang, Ziwen
    Wang, Chenguang
    Wang, Xiaoguang
    BIOMETRICAL JOURNAL, 2023, 65 (08)
  • [26] A comparison of confounder selection and adjustment methods for estimating causal effects using large healthcare databases
    Benasseur, Imane
    Talbot, Denis
    Durand, Madeleine
    Holbrook, Anne
    Matteau, Alexis
    Potter, Brian J.
    Renoux, Christel
    Schnitzer, Mireille E.
    Tarride, Jean-Eric
    Guertin, Jason R.
    PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2022, 31 (04) : 424 - 433
  • [27] Multiply robust estimation of causal quantile treatment effects
    Xie, Yuying
    Cotton, Cecilia
    Zhu, Yeying
    STATISTICS IN MEDICINE, 2020, 39 (28) : 4238 - 4251
  • [28] Robust estimation of causal effects of binary treatments in unconfounded studies with dichotomous outcomes
    Gutman, R.
    Rubin, D. B.
    STATISTICS IN MEDICINE, 2013, 32 (11) : 1795 - 1814
  • [29] On estimating regression-based causal effects using sufficient dimension reduction
    Luo, Wei
    Zhu, Yeying
    Ghosh, Debashis
    BIOMETRIKA, 2017, 104 (01) : 51 - 65
  • [30] Estimating marginal causal effects in a secondary analysis of case-control data
    Persson, Emma
    Waernbaum, Ingeborg
    Lind, Torbjorn
    STATISTICS IN MEDICINE, 2017, 36 (15) : 2404 - 2419