Literature DB >> 23913589

Estimation of the effect of interventions that modify the received treatment.

S Haneuse1, A Rotnitzky.   

Abstract

Motivated by a study of surgical operating time and post-operative outcomes for lung cancer, we consider the estimation of causal effects of continuous point-exposure treatments. To investigate causality, the standard paradigm postulates a series of treatment-specific counterfactual outcomes and establishes conditions under which we may learn about them from observational study data. While many choices are possible, causal effects are typically defined in terms of variation of the mean of counterfactual outcomes in hypothetical worlds in which specific treatment strategies are 'applied' to all individuals. For example, one might compare two worlds: one where each individual receives some specific dose and a second where each individual receives some other dose. For our motivating study, defining causal effects in this way corresponds to (hypothetical) interventions that could not conceivably be implemented in the real world. In this work, we consider an alternative, complimentary framework that investigates variation in the mean of counterfactual outcomes under hypothetical treatment strategies where each individual receives a treatment dose corresponding to that actually received but modified in some pre-specified way. Quantification of this variation is defined in terms of contrasts for specific interventions as well as in terms of the parameters of a new class of marginal structural mean models. Within this framework, we propose three estimators: an outcome regression estimator, an inverse probability of treatment weighted estimator and a doubly robust estimator. We illustrate the methods with an analysis of the motivating data.
Copyright © 2013 John Wiley & Sons, Ltd.

Entities:  

Keywords:  causal inference; double robustness; marginal structural mean model; observational study

Mesh:

Year:  2013        PMID: 23913589     DOI: 10.1002/sim.5907

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  11 in total

1.  Identification, estimation and approximation of risk under interventions that depend on the natural value of treatment using observational data.

Authors:  Jessica G Young; Miguel A Herńan; James M Robins
Journal:  Epidemiol Methods       Date:  2014-12

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3.  When Effects Cannot be Estimated: Redefining Estimands to Understand the Effects of Naloxone Access Laws.

Authors:  Kara E Rudolph; Catherine Gimbrone; Ellicott C Matthay; Iván Díaz; Corey S Davis; Katherine Keyes; Magdalena Cerdá
Journal:  Epidemiology       Date:  2022-06-24       Impact factor: 4.860

4.  Inverse probability weighted estimation of risk under representative interventions in observational studies.

Authors:  Jessica G Young; Roger W Logan; James M Robins; Miguel A Hernán
Journal:  J Am Stat Assoc       Date:  2018-08-10       Impact factor: 5.033

5.  Efficient nonparametric inference on the effects of stochastic interventions under two-phase sampling, with applications to vaccine efficacy trials.

Authors:  Nima S Hejazi; Mark J van der Laan; Holly E Janes; Peter B Gilbert; David C Benkeser
Journal:  Biometrics       Date:  2020-09-28       Impact factor: 2.571

6.  Bayesian G-Computation for Estimating Impacts of Interventions on Exposure Mixtures: Demonstration With Metals From Coal-Fired Power Plants and Birth Weight.

Authors:  Alexander P Keil; Jessie P Buckley; Amy E Kalkbrenner
Journal:  Am J Epidemiol       Date:  2021-12-01       Impact factor: 4.897

7.  Incremental Propensity Score Effects for Time-fixed Exposures.

Authors:  Ashley I Naimi; Jacqueline E Rudolph; Edward H Kennedy; Abigail Cartus; Sharon I Kirkpatrick; David M Haas; Hyagriv Simhan; Lisa M Bodnar
Journal:  Epidemiology       Date:  2021-03-01       Impact factor: 4.860

8.  On Variance of the Treatment Effect in the Treated When Estimated by Inverse Probability Weighting.

Authors:  Sarah A Reifeis; Michael G Hudgens
Journal:  Am J Epidemiol       Date:  2022-05-20       Impact factor: 5.363

9.  Parametric g-formula implementations for causal survival analyses.

Authors:  Lan Wen; Jessica G Young; James M Robins; Miguel A Hernán
Journal:  Biometrics       Date:  2020-07-06       Impact factor: 1.701

10.  Estimating Effects of Dynamic Treatment Strategies in Pharmacoepidemiologic Studies with Time-varying Confounding: A Primer.

Authors:  Xiaojuan Li; Jessica G Young; Sengwee Toh
Journal:  Curr Epidemiol Rep       Date:  2017-10-17
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