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- Analyzing Sequentially Randomized Trials Based on Causal Effect Models for Realistic Individualized Treatment Rules
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- Abstract:
- In this paper, we argue that causal effect models for realistic
individualized treatment rules represent an attractive tool for
analyzing sequentially randomized trials. Unlike a number of methods
proposed previously, this approach does not rely on the assumption
that intermediate outcomes are discrete or that models for the
distributions of these intermediate outcomes given the observed past
are correctly specified. In addition, it generalizes the methodology
for performing pairwise comparisons between individualized treatment
rules by allowing the user to posit a marginal structural model for
all candidate treatment rules simultaneously. If only a small number
of candidate treatment rules are under consideration, a non-parametric
marginal structural can be used to conveniently carry out all of the
pairwise comparisons of interest in a single step. An appropriately
chosen marginal structural model becomes particularly useful, however,
as the number of candidate treatment rules increases, in which case an
approach based on individual pairwise comparisons would be likely to
suffer from too much sampling variability to provide an informative
answer. In addition, such causal effect models represent an
interesting alternative to methods previously proposed for selecting
an optimal individualized treatment rule in that they give the user a
sense of how the optimal outcome is estimated to change in the
neighborhood of the identified optimum. We discuss an
inverse-probability-of-treatment-weighted (IPTW) estimator for these
causal effect models that is straightforward to implement using
standard statistical software and develop an approach for constructing
valid asymptotic confidence intervals based on the influence curve of
this estimator. The methodology is illustrated in two simulation
studies that are intended to mimic an HIV/AIDS trial.
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Oliver Bembom and Mark J. van der Laan,
"Analyzing Sequentially Randomized Trials Based on Causal Effect Models for Realistic Individualized Treatment Rules"
(May 2007).
U.C. Berkeley Division of Biostatistics Working Paper Series.
Working Paper 216.
http://www.bepress.com/ucbbiostat/paper216