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- New estimating methods for surrogate outcome data
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- Abstract:
- Surrogate outcome data arise frequently in medical research. The true outcomes of
interest are expensive or hard to ascertain, but measurements of surrogate outcomes (or more
generally speaking, the correlates of the true outcomes) are usually available. In this paper
we assume that the conditional expectation of the true outcome given covariates is known up
to a finite dimensional parameter. When the true outcome is missing at random, the e±cient
score function for the parameter in the conditional mean model has a simple form, which
is similar to the generalized estimating functions. There is no integral equation involved
as in Robins, Rotnitzky and Zhao (1994) for general cases. We propose two estimating
methods, parametric and nonparametric, to estimate the parameter by solving the e±cient
score equations. Simulation studies show the proposed estimators work well for reasonable
sample sizes.
- Subject Area:
- Clinical Trials, Design of Experiments and Sample Surveys, Statistical Theory and Methods
- Suggested Citation:
- Bin Nan,
"New estimating methods for surrogate outcome data"
(June 2004).
The University of Michigan Department of Biostatistics Working Paper Series.
Working Paper 18.
http://www.bepress.com/umichbiostat/paper18
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October 01, 2003