Matched Design for Marginal Causal Effect on Restricted Mean Survival Time in Observational Studies
Zihan Lin, Ai Ni, Bo Lu

TL;DR
This paper proposes a matched design with sensitivity analysis for estimating the causal effect of exposure on survival time using RMST difference, addressing confounding issues in observational studies.
Contribution
It introduces a propensity score matched estimator for RMST difference with asymptotic unbiasedness and a novel sensitivity analysis strategy for unmeasured confounding.
Findings
Method outperforms existing approaches in simulations.
Estimator is asymptotically unbiased.
Sensitivity analysis adapts E-value for matched data.
Abstract
Investigating the causal relationship between exposure and the time-to-event outcome is an important topic in biomedical research. Previous literature has discussed the potential issues of using the hazard ratio as a marginal causal effect measure due to its noncollapsibility property. In this paper, we advocate using the restricted mean survival time (RMST) difference as the marginal causal effect measure, which is collapsible and has a simple interpretation as the difference of area under survival curves over a certain time horizon. To address both measured and unmeasured confounding, a matched design with sensitivity analysis is proposed. Matching is used to pair similar treated and untreated subjects together, which is more robust to outcome model misspecification. Our propensity score matched RMST difference estimator is shown to be asymptotically unbiased and the corresponding…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Health Systems, Economic Evaluations, Quality of Life · Statistical Methods and Inference
