History-Adjusted Marginal Structural Models and Statically-Optimal Dynamic Treatment Regimens
J. van der Laan Mark,
Petersen Maya L and
Joffe Marshall M
Additional contact information
J. van der Laan Mark: Division of Biostatistics, School of Public Health, University of California, Berkeley
Petersen Maya L: Division of Biostatistics, School of Public Health, University of California, Berkeley
Joffe Marshall M: Department of Biostatistics and Epidemiology, University of Pennsylvania School of Medicine
The International Journal of Biostatistics, 2005, vol. 1, issue 1, 41
Abstract:
Marginal structural models (MSM) provide a powerful tool for estimating the causal effect of a treatment. These models, introduced by Robins, model the marginal distributions of treatment-specific counterfactual outcomes, possibly conditional on a subset of the baseline covariates. Marginal structural models are particularly useful in the context of longitudinal data structures, in which each subject's treatment and covariate history are measured over time, and an outcome is recorded at a final time point. However, the utility of these models for some applications has been limited by their inability to incorporate modification of the causal effect of treatment by time-varying covariates. Particularly in the context of clinical decision making, such time-varying effect modifiers are often of considerable or even primary interest, as they are used in practice to guide treatment decisions for an individual. In this article we propose a generalization of marginal structural models, which we call history-adjusted marginal structural models (HA-MSM). These models allow estimation of adjusted causal effects of treatment, given the observed past, and are therefore more suitable for making treatment decisions at the individual level and for identification of time-dependent effect modifiers. Specifically, a HA-MSM models the conditional distribution of treatment-specific counterfactual outcomes, conditional on the whole or a subset of the observed past up till a time-point, simultaneously for all time-points. Double robust inverse probability of treatment weighted estimators have been developed and studied in detail for standard MSM. We extend these results by proposing a class of double robust inverse probability of treatment weighted estimators for the unknown parameters of the HA-MSM. In addition, we show that HA-MSM provide a natural approach to identifying the dynamic treatment regimen which follows, at each time-point, the history-adjusted (up till the most recent time point) optimal static treatment regimen. We illustrate our results using an example drawn from the treatment of HIV infection.
Keywords: causal inference; confounding; counterfactual; double robust estimation; dynamic treatment regimen; G-computation estimation; inverse probability of treatment weighted estimation; longitudinal data; optimal dynamic treatment regimen; HIV; antiretroviral resistance; antiretroviral therapy (search for similar items in EconPapers)
Date: 2005
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Citations: View citations in EconPapers (10)
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Persistent link: https://EconPapers.repec.org/RePEc:bpj:ijbist:v:1:y:2005:i:1:n:4
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DOI: 10.2202/1557-4679.1003
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The International Journal of Biostatistics is currently edited by Antoine Chambaz, Alan E. Hubbard and Mark J. van der Laan
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