Biostatistics 1:465-480 (2000)
© 2000 Oxford University Press
Joint modelling of longitudinal measurements and event time data
1 Medical Statistics Unit, Lancaster University, LA1 4YF, UKrobin.henderson{at}lancaster.ac.uk
This paper formulates a class of models for the joint behaviour of a sequence of longitudinal measurements and an associated sequence of event times, including single-event survival data. This class includes and extends a number of specific models which have been proposed recently, and, in the absence of association, reduces to separate models for the measurements and events based, respectively, on a normal linear model with correlated errors and a semi-parametric proportional hazards or intensity model with frailty. Special cases of the model class are discussed in detail and an estimation procedure which allows the two components to be linked through a latent stochastic process is described. Methods are illustrated using results from a clinical trial into the treatment of schizophrenia.
Keywords: Biomarkers; Counting processes; Informative drop-out; Repeated measurements; Serial correlation; Survival
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