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Volume 31, Issue 6: December, 2004
Abstract
Assessing Intervention Effects in a School-Based
Nutrition Intervention Trial: Which Analytic Model Is Most
Powerful?
Jessica B. Janega, PhD, David M. Murray, PhD, Sherri P. Varnell,
MS, PhD, Jonathan L. Blitstein, MS, Amanda S. Birnbaum, PhD,
MPH, Leslie A. Lytle, PhD
This article compares four mixed-model analyses valid for
group-randomized trials (GRTs) involving a nested cohort design
with a single pretest and posttest. This study makes estimates
of intraclass correlations (ICCs) available to investigators
planning GRTs addressing dietary outcomes. It also provides
formulae demonstrating the potential benefits to the standard
error of the intervention effect (sD) from adjustments for
both fixed and time-varying covariates and correlations over
time. These estimates will allow other researchers using these
variables to plan their studies by estimating a priori detectable
differences and sample size requirements for any of the four
analytic options. These methods are demonstrated using data
from the Teens Eating for Energy and Nutrition at School study.
Mixed-model analyses of covariance proved to be the most powerful
analysis in that data set. The formulae may be applied to
any dependent variable in any GRT given corresponding information
for those variables on the parameters that define the formulae.
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