Semiparametric Inference of the Complier Average Causal Effect with Nonignorable Missing Outcomes

Author:

Chen Hua1,Ding Peng2,Geng Zhi3,Zhou Xiao-Hua4

Affiliation:

1. Institute of Applied Physics and Computational Mathematics, Beijing, China

2. Department of Statistics, University of California at Berkeley, California

3. School of Mathematical Sciences Peking University, Beijing, China

4. Department of Biostatistics, University of Washington, and Biostatistics Unit HSR&D Center of Excellence, VA Puget Sound Health Care System, Seattle, Washington

Abstract

Noncompliance and missing data often occur in randomized trials, which complicate the inference of causal effects. When both noncompliance and missing data are present, previous papers proposed moment and maximum likelihood estimators for binary and normally distributed continuous outcomes under the latent ignorable missing data mechanism. However, the latent ignorable missing data mechanism may be violated in practice, because the missing data mechanism may depend directly on the missing outcome itself. Under noncompliance and an outcome-dependent nonignorable missing data mechanism, previous studies showed the identifiability of complier average causal effect for discrete outcomes. In this article, we study the semiparametric identifiability and estimation of complier average causal effect in randomized clinical trials with both all-or-none noncompliance and outcome-dependent nonignorable missing continuous outcomes, and propose a two-step maximum likelihood estimator in order to eliminate the infinite dimensional nuisance parameter. Our method does not need to specify a parametric form for the missing data mechanism. We also evaluate the finite sample property of our method via extensive simulation studies and sensitivity analysis, with an application to a double-blinded psychiatric clinical trial.

Funder

CAEP

NSFC

Department of Veterans Affairs HSR&D RCS

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

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