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On summary measures analysis of the linear mixed effects model for repeated measures when data are not missing completely at random
Authors
Andersen
Botacci
+56 more
Breiman
Breslow
Brier
Burke
Cox
Detrano
Efron
Efron
Farraggi
Forster
Galea
Graf
Graf
Graf
Habbema
Hadorn
Hand
Harrell
Harrell
Haybittle
Henderson
Henderson
Hermans
Hilden
Kaplan
Katz
Kong
Korn
Korn
Laupacis
Lee
Lee
Linnet
Mackillop
Maltoni
Marshall
McClish
Parkes
Pelosio
Peto
Ripley
Rowan
Sauerbrei
Schemper
Schemper
Schemper
Schmitz
Schumacher
Shapiro
Simon
Spiegelhalter
van Houwelingen
Winkler
Winkler
Wyatt
Yates
Publication date
1 January 1999
Publisher
'Wiley'
Doi
Abstract
Subjects often drop out of longitudinal studies prematurely, yielding unbalanced data with unequal numbers of measures for each subject. A simple and convenient approach to analysis is to develop summary measures for each individual and then regress the summary measures on between-subject covariates. We examine properties of this approach in the context of the linear mixed effects model when the data are not missing completely at random, in the sense that drop-out depends on the values of the repeated measures after conditioning on fixed covariates. The approach is compared with likelihood-based approaches that model the vector of repeated measures for each individual. Methods are compared by simulation for the case where repeated measures over time are linear and can be summarized by a slope and intercept for each individual. Our simulations suggest that summary measures analysis based on the slopes alone is comparable to full maximum likelihood when the data are missing completely at random but is markedly inferior when the data are not missing completely at random. Analysis discarding the incomplete cases is even worse, with large biases and very poor confidence coverage. Copyright © 1999 John Wiley & Sons, Ltd.Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/34853/1/269_ftp.pd
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