A BAYESIAN SHRINKAGE MODEL FOR INCOMPLETE LONGITUDINAL BINARY DATA WITH APPLICATION TO THE BREAST CANCER PREVENTION TRIAL


Autoria(s): Wang, C.; Daniels, M.J.; Scharfstein, Daniel O.; Land, S.
Data(s)

22/05/2009

Resumo

We consider inference in randomized studies, in which repeatedly measured outcomes may be informatively missing due to drop out. In this setting, it is well known that full data estimands are not identified unless unverified assumptions are imposed. We assume a non-future dependence model for the drop-out mechanism and posit an exponential tilt model that links non-identifiable and identifiable distributions. This model is indexed by non-identified parameters, which are assumed to have an informative prior distribution, elicited from subject-matter experts. Under this model, full data estimands are shown to be expressed as functionals of the distribution of the observed data. To avoid the curse of dimensionality, we model the distribution of the observed data using a Bayesian shrinkage model. In a simulation study, we compare our approach to a fully parametric and a fully saturated model for the distribution of the observed data. Our methodology is motivated and applied to data from the Breast Cancer Prevention Trial.

Formato

application/pdf

Identificador

http://biostats.bepress.com/jhubiostat/paper188

http://biostats.bepress.com/cgi/viewcontent.cgi?article=1188&context=jhubiostat

Publicador

Collection of Biostatistics Research Archive

Fonte

Johns Hopkins University, Dept. of Biostatistics Working Papers

Palavras-Chave #Informative drop-out; Prior elicitation #Clinical Trials
Tipo

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