Doubly robust estimation and sensitivity analysis for marginal structural quantile models

  • Chao Cheng
  • , Liangyuan Hu
  • , Fan Li

    Research output: Contribution to journalArticlepeer-review

    3 Scopus citations

    Abstract

    The marginal structure quantile model (MSQM) provides a unique lens to understand the causal effect of a time-varying treatment on the full distribution of potential outcomes. Under the semiparametric framework, we derive the efficiency influence function for the MSQM, from which a new doubly robust estimator is proposed for point estimation and inference. We show that the doubly robust estimator is consistent if either of the models associated with treatment assignment or the potential outcome distributions is correctly specified, and is semiparametric efficient if both models are correct. To implement the doubly robust MSQM estimator, we propose to solve a smoothed estimating equation to facilitate efficient computation of the point and variance estimates. In addition, we develop a confounding function approach to investigate the sensitivity of several MSQM estimators when the sequential ignorability assumption is violated. Extensive simulations are conducted to examine the finite-sample performance characteristics of the proposed methods. We apply the proposed methods to the Yale New Haven Health System Electronic Health Record data to study the effect of antihypertensive medications to patients with severe hypertension and assess the robustness of the findings to unmeasured baseline and time-varying confounding.

    Original languageEnglish
    Article numberujae045
    JournalBiometrics
    Volume80
    Issue number2
    DOIs
    StatePublished - Jun 2024

    Keywords

    • causal inference
    • double robustness
    • efficient influence function
    • inverse probability weighting
    • quantile causal effect
    • unmeasured confounding

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