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Autores principales: Zivich, Paul N, Lu, Haidong
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2506.03347
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author Zivich, Paul N
Lu, Haidong
author_facet Zivich, Paul N
Lu, Haidong
contents 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, describe 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 a g-computation estimator and study the theoretical and finite-sample properties of a novel estimator.
format Preprint
id arxiv_https___arxiv_org_abs_2506_03347
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Constructing g-computation estimators: two case studies in selection bias
Zivich, Paul N
Lu, Haidong
Methodology
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, describe 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 a g-computation estimator and study the theoretical and finite-sample properties of a novel estimator.
title Constructing g-computation estimators: two case studies in selection bias
topic Methodology
url https://arxiv.org/abs/2506.03347