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Constructing g-computation estimators: two case studies in selection bias

Constructing g-computation estimators: two case studies in selection bias

来源:Arxiv_logoArxiv
英文摘要

G-computation is a useful estimation method that can be adapted to address various biases in epidemiology. However, these adaptations may not be obvious for some complex causal structures. This challenge is an example of the much wider issue of translating a causal diagram into a novel estimation strategy. To highlight these challenges, we consider two recent cases from the selection bias literature: treatment-induced selection and co-occurrence of biases that lack a joint adjustment set. For each case study, we show how g-computation can be adapted, described how to implement that adaptation, show some general statistical properties, and illustrate the estimator using simulation. To simplify both the theoretical study and practical application of our estimators, we express the proposed g-computation estimators as stacked estimating equations. These examples illustrate how epidemiologists can translate identification results into an estimation strategy and study the theoretical and finite-sample properties of a novel estimator.

Paul N Zivich、Haidong Lu

医学研究方法

Paul N Zivich,Haidong Lu.Constructing g-computation estimators: two case studies in selection bias[EB/OL].(2025-06-03)[2025-07-16].https://arxiv.org/abs/2506.03347.点此复制

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