A flexible Bayesian g-formula for causal survival analyses with time-dependent confounding
- URL: http://arxiv.org/abs/2402.02306v2
- Date: Sat, 29 Jun 2024 01:30:58 GMT
- Title: A flexible Bayesian g-formula for causal survival analyses with time-dependent confounding
- Authors: Xinyuan Chen, Liangyuan Hu, Fan Li,
- Abstract summary: A common objective in causal analysis is to estimate the causal survival curve under hypothetical intervention scenarios.
To enhance the traditional parametric g-formula approach, we developed a more adaptable Bayesian g-formula estimator.
- Score: 11.481436666029644
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In longitudinal observational studies with a time-to-event outcome, a common objective in causal analysis is to estimate the causal survival curve under hypothetical intervention scenarios within the study cohort. The g-formula is a particularly useful tool for this analysis. To enhance the traditional parametric g-formula approach, we developed a more adaptable Bayesian g-formula estimator, which incorporates the Bayesian additive regression trees (BART) in the modeling of the time-evolving generative components, aiming to mitigate bias due to model misspecification. Specifically, we introduce a more general class of g-formulas for discrete survival data that can incorporate the longitudinal balancing scores, which serve as an effective method for dimension reduction and are vital when dealing with an expanding array of time-varying confounders. The minimum sufficient formulation of these longitudinal balancing scores is linked to the nature of treatment regimes, whether static or dynamic. For each type of treatment regime, we provide posterior sampling algorithms grounded in the BART framework. We have conducted simulation studies to illustrate the empirical performance of the proposed method and further demonstrate its practical utility using data from the Yale New Haven Health System's (YNHHS) electronic health records.
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