Bridging the Gap Between Design and Analysis: Randomization Inference and Sensitivity Analysis for Matched Observational Studies with Treatment Doses
Matching is a commonly used causal inference study design in observational studies. Through matching on measured confounders between different treatment groups, valid randomization inferences can be conducted under the no unmeasured confounding assumption, and sensitivity analysis can be further per...
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Zusammenfassung: | Matching is a commonly used causal inference study design in observational
studies. Through matching on measured confounders between different treatment
groups, valid randomization inferences can be conducted under the no unmeasured
confounding assumption, and sensitivity analysis can be further performed to
assess sensitivity of randomization inference results to potential unmeasured
confounding. However, for many common matching designs, there is still a lack
of valid downstream randomization inference and sensitivity analysis
approaches. Specifically, in matched observational studies with treatment doses
(e.g., continuous or ordinal treatments), with the exception of some special
cases such as pair matching, there is no existing randomization inference or
sensitivity analysis approach for studying analogs of the sample average
treatment effect (Neyman-type weak nulls), and no existing valid sensitivity
analysis approach for testing the sharp null of no effect for any subject
(Fisher's sharp null) when the outcome is non-binary. To fill these gaps, we
propose new methods for randomization inference and sensitivity analysis that
can work for general matching designs with treatment doses, applicable to
general types of outcome variables (e.g., binary, ordinal, or continuous), and
cover both Fisher's sharp null and Neyman-type weak nulls. We illustrate our
approaches via comprehensive simulation studies and a real-data application. |
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DOI: | 10.48550/arxiv.2409.12848 |