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Activity Number: 146
Type: Invited
Date/Time: Monday, August 1, 2016 : 10:30 AM to 12:20 PM
Sponsor: Korean International Statistical Society
Abstract #318242 View Presentation
Title: The Design of Cluster-Randomized Trials Using Robust Methods for Right- and Interval-Censored Event Times
Author(s): Yujie Zhong and Richard John Cook*
Companies: Cambridge Institute of Public Health and University of Waterloo
Keywords: censored data ; cluster-randomization ; copula model ; robust inference ; sample size
Abstract:

In cluster-randomized trials intervention effects are often formulated by specifying marginal models, fitting them under a working independence assumption, and using robust variance estimates to address the association in the responses within clusters. We develop sample size criteria within this framework, with analyses based on semiparametric Cox regression models fitted with event times subject to right-censoring. At the design stage, copula models are specified to enable derivation of the asymptotic variance of estimators from a marginal Cox regression model, and to compute the number of clusters necessary to satisfy power requirements. Simulation studies demonstrate the validity of the sample size formula in finite samples for a range of cluster sizes, censoring rates and degrees of within-cluster association among event times. The power and relative efficiency implications of copula misspecification is studied, as well as the effect of within-cluster dependence in the censoring times. Sample size criteria and other design issues are also addressed for the setting where the event status is only ascertained at periodic assessments and times are interval-censored.


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