Sensitivity analysis methods for outcome missingness using substantive-model-compatible multiple imputation and their application in causal inference
Jiaxin Zhang, S. Ghazaleh Dashti, John B. Carlin, Katherine J. Lee,, Jonathan W. Bartlett, Margarita Moreno-Betancur

TL;DR
This paper develops and evaluates new methods for sensitivity analysis in multiple imputation that are compatible with substantive models, especially when outcomes influence their own missingness, improving causal inference accuracy.
Contribution
It introduces two novel approaches, NAR-SMCFCS and NAR-SMC-stack, extending existing methods to perform bias-reducing sensitivity analysis under outcome-dependent missingness.
Findings
Naive NARFCS produces bias in effect estimates.
Proposed methods are approximately unbiased in simulations.
Methods are applicable in practical causal inference scenarios.
Abstract
When using multiple imputation (MI) for missing data, maintaining compatibility between the imputation model and substantive analysis is important for avoiding bias. For example, some causal inference methods incorporate an outcome model with exposure-confounder interactions that must be reflected in the imputation model. Two approaches for compatible imputation with multivariable missingness have been proposed: Substantive-Model-Compatible Fully Conditional Specification (SMCFCS) and a stacked-imputation-based approach (SMC-stack). If the imputation model is correctly specified, both approaches are guaranteed to be unbiased under the "missing at random" assumption. However, this assumption is violated when the outcome causes its own missingness, which is common in practice. In such settings, sensitivity analyses are needed to assess the impact of alternative assumptions on results. An…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Bayesian Inference · Statistical Methods and Inference
