Improving Efficiency of Inferences in Randomized Clinical Trials Using Auxiliary Covariates
Min Zhang
PhD Candidate in Statistics
North Carolina State University
Friday, February 15th
10:00am
MoosT 2-520
Minneapolis Campus
Abstract:
The primary goal of a randomized clinical trial is to make comparisons among
two or more treatments. In general, comparisons may be based on meaningful parameters
in a relevant statistical model; for example, pairwise odds-ratios or log-odds
ratios may be used when the outcome is binary. Standard analyses for estimation
and testing in this context typically are based on the data collected on response
and treatment assignment only. In many trials, auxiliary baseline covariate
information may also be available, and it is of interest to exploit these data
to improve the efficiency of inferences. In this talk, we take a
semiparametric theory perspective and present a broadly-applicable approach
to adjustment for auxiliary covariates to achieve more efficient estimators
and tests for treatment parameters in the analysis of randomized clinical trials.
Unlike the usual adjustment via a regression model for mean outcome as a function
of treatment assignment and covariates, this approach separates estimation of
treatment effect from modeling the relationships of outcome to covariates, which
may lessen concerns over bias and subjectivity associated with regression-based
adjustment.
A social tea will be held at 9:30 A.M. in A434 Mayo. All are Welcome.
For more details contact 612-624-4655 or see http://www.biostat.umn.edu/seminar_academic.html