Multiply robust causal inference in the presence of an error-prone treatment

被引:0
作者
Wei, Shaojie [1 ]
He, Qinpeng [2 ,3 ]
Li, Wei [2 ,3 ]
Geng, Zhi [4 ]
机构
[1] Beijing Wuzi Univ, Sch Syst Sci & Stat, Beijing, Peoples R China
[2] Renmin Univ China, Ctr Appl Stat, Beijing 100872, Peoples R China
[3] Renmin Univ China, Sch Stat, Beijing 100872, Peoples R China
[4] Beijing Technol & Business Univ, Sch Math & Stat, Beijing, Peoples R China
基金
北京市自然科学基金; 国家重点研发计划; 中国国家自然科学基金;
关键词
Average treatment effect; influence function; misclassification; semiparametric efficiency bound; validation sample; AVERAGE TREATMENT; SEMIPARAMETRIC ESTIMATION; PROPENSITY SCORE; MODELS; MISCLASSIFICATION; NONCOMPLIANCE; REGRESSION;
D O I
10.1177/09622802251338364
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Numerous estimation procedures employed in causal inference often rely on accurately measured data. However, the prevalence of measurement errors in practical studies may yield biased effect estimates. It is common to employ validation samples to rectify such biases in the measurement error literature. This article focuses on the estimation of the average causal effect with a misclassified binary treatment in a primary population of interest. By leveraging a validation sample with covariates, an error-prone version of treatment and a true treatment recorded, we provide identifiability results under certain conditions. Building on identifiability, we explore three classes of estimators, each demonstrating consistency and asymptotic normality within distinct model sets. Furthermore, we propose a multiply robust estimation approach for the treatment effect based on the semiparametric theory framework. The multiply robust estimator retains consistent under any one of the listed model sets and achieves the semiparametric efficiency bound, provided all models are correct. We demonstrate the satisfactory performance of the proposed estimators through simulation studies and a real data analysis.
引用
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页数:14
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