Literature DB >> 30811344

Double Robust Efficient Estimators of Longitudinal Treatment Effects: Comparative Performance in Simulations and a Case Study.

Linh Tran1, Constantin Yiannoutsos2, Kara Wools-Kaloustian3, Abraham Siika4, Mark van der Laan5, Maya Petersen5.   

Abstract

A number of sophisticated estimators of longitudinal effects have been proposed for estimating the intervention-specific mean outcome. However, there is a relative paucity of research comparing these methods directly to one another. In this study, we compare various approaches to estimating a causal effect in a longitudinal treatment setting using both simulated data and data measured from a human immunodeficiency virus cohort. Six distinct estimators are considered: (i) an iterated conditional expectation representation, (ii) an inverse propensity weighted method, (iii) an augmented inverse propensity weighted method, (iv) a double robust iterated conditional expectation estimator, (v) a modified version of the double robust iterated conditional expectation estimator, and (vi) a targeted minimum loss-based estimator. The details of each estimator and its implementation are presented along with nuisance parameter estimation details, which include potentially pooling the observed data across all subjects regardless of treatment history and using data adaptive machine learning algorithms. Simulations are constructed over six time points, with each time point steadily increasing in positivity violations. Estimation is carried out for both the simulations and applied example using each of the six estimators under both stratified and pooled approaches of nuisance parameter estimation. Simulation results show that double robust estimators remained without meaningful bias as long as at least one of the two nuisance parameters were estimated with a correctly specified model. Under full misspecification, the bias of the double robust estimators remained better than that of the inverse propensity estimator under misspecification, but worse than the iterated conditional expectation estimator. Weighted estimators tended to show better performance than the covariate estimators. As positivity violations increased, the mean squared error and bias of all estimators considered became worse, with covariate-based double robust estimators especially susceptible. Applied analyses showed similar estimates at most time points, with the important exception of the inverse propensity estimator which deviated markedly as positivity violations increased. Given its efficiency, ability to respect the parameter space, and observed performance, we recommend the pooled and weighted targeted minimum loss-based estimator.

Entities:  

Keywords:  aiptw; causal inference; double robust; efficient influence function; iptw; longitudinal treatment; multiple testing; semiparametric models; tmle

Mesh:

Year:  2019        PMID: 30811344      PMCID: PMC6710167          DOI: 10.1515/ijb-2017-0054

Source DB:  PubMed          Journal:  Int J Biostat        ISSN: 1557-4679            Impact factor:   1.829


  21 in total

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Authors:  Maya L Petersen; Kristin E Porter; Susan Gruber; Yue Wang; Mark J van der Laan
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3.  Improved double-robust estimation in missing data and causal inference models.

Authors:  Andrea Rotnitzky; Quanhong Lei; Mariela Sued; James M Robins
Journal:  Biometrika       Date:  2012-04-29       Impact factor: 2.445

4.  Semiparametric Estimation of the Impacts of Longitudinal Interventions on Adolescent Obesity using Targeted Maximum-Likelihood: Accessible Estimation with the ltmle Package.

Authors:  Anna L Decker; Alan Hubbard; Catherine M Crespi; Edmund Y W Seto; May C Wang
Journal:  J Causal Inference       Date:  2014-03

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Journal:  Bull Math Biol       Date:  1990       Impact factor: 1.758

6.  Stratified doubly robust estimators for the average causal effect.

Authors:  Satoshi Hattori; Masayuki Henmi
Journal:  Biometrics       Date:  2014-02-26       Impact factor: 2.571

7.  Targeted learning in real-world comparative effectiveness research with time-varying interventions.

Authors:  Romain Neugebauer; Julie A Schmittdiel; Mark J van der Laan
Journal:  Stat Med       Date:  2014-02-17       Impact factor: 2.373

8.  A graphical approach to the identification and estimation of causal parameters in mortality studies with sustained exposure periods.

Authors:  J Robins
Journal:  J Chronic Dis       Date:  1987

9.  Estimation of causal effects of binary treatments in unconfounded studies.

Authors:  Roee Gutman; Donald B Rubin
Journal:  Stat Med       Date:  2015-05-26       Impact factor: 2.373

10.  Constructing inverse probability weights for marginal structural models.

Authors:  Stephen R Cole; Miguel A Hernán
Journal:  Am J Epidemiol       Date:  2008-08-05       Impact factor: 4.897

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  4 in total

1.  Using longitudinal targeted maximum likelihood estimation in complex settings with dynamic interventions.

Authors:  M Schomaker; M A Luque-Fernandez; V Leroy; M A Davies
Journal:  Stat Med       Date:  2019-08-22       Impact factor: 2.373

2.  MULTIPLY ROBUST ESTIMATORS OF CAUSAL EFFECTS FOR SURVIVAL OUTCOMES.

Authors:  Lan Wen; Miguel A Hernán; James M Robins
Journal:  Scand Stat Theory Appl       Date:  2021-11-11       Impact factor: 1.040

3.  Artificial Intelligence in Pharmacoepidemiology: A Systematic Review. Part 1-Overview of Knowledge Discovery Techniques in Artificial Intelligence.

Authors:  Maurizio Sessa; Abdul Rauf Khan; David Liang; Morten Andersen; Murat Kulahci
Journal:  Front Pharmacol       Date:  2020-07-16       Impact factor: 5.810

4.  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

  4 in total

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