Simplifying Causal Mediation Analysis for Time-to-Event Outcomes using Pseudo-Values
Alex Ocampo, Enrico Giudice, Dieter A. H\"aring, Baldur Magnusson,, Theis Lange, Zachary R. McCaw

TL;DR
This paper introduces a pseudo-value based method for causal mediation analysis in survival outcomes, simplifying estimation and interpretation compared to hazard ratio approaches, and applicable to various survival measures.
Contribution
It proposes a novel pseudo-value approach that facilitates mediation analysis for survival data within standard software, improving simplicity and interpretability.
Findings
Method is unbiased across 324 scenarios
Controls type-I error at nominal level
Applied successfully to clinical trial data
Abstract
Mediation analysis for survival outcomes is challenging. Most existing methods quantify the treatment effect using the hazard ratio (HR) and attempt to decompose the HR into the direct effect of treatment plus an indirect, or mediated, effect. However, the HR is not expressible as an expectation, which complicates this decomposition, both in terms of estimation and interpretation. Here, we present an alternative approach which leverages pseudo-values to simplify estimation and inference. Pseudo-values take censoring into account during their construction, and once derived, can be modeled in the same way as any continuous outcome. Thus, pseudo-values enable mediation analysis for a survival outcome to fit seamlessly into standard mediation software (e.g. CMAverse in R). Pseudo-values are easy to calculate via a leave-one-observation-out procedure (i.e. jackknifing) and the calculation…
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Taxonomy
TopicsQualitative Comparative Analysis Research
