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Statistical models for longitudinal biomarkers of disease onset

We consider the analysis of serial biomarkers to screen and monitor individuals in a given population for onset of a specific disease of interest. The biomarker readings are subject to error. We survey some of the existing literature and concentrate on two recently proposed models. The first is a fu...

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Bibliographic Details
Published in:Statistics in medicine 2000-02, Vol.19 (4), p.617-637
Main Authors: Slate, Elizabeth H., Turnbull, Bruce W.
Format: Article
Language:English
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Summary:We consider the analysis of serial biomarkers to screen and monitor individuals in a given population for onset of a specific disease of interest. The biomarker readings are subject to error. We survey some of the existing literature and concentrate on two recently proposed models. The first is a fully Bayesian hierarchical structure for a mixed effects segmented regression model. Posterior estimates of the changepoint (onset time) distribution are obtained by Gibbs sampling. The second is a hidden changepoint model in which the onset time distribution is estimated by maximum likelihood using the EM algorithm. Both methods lead to a dynamic index that represents a strength of evidence that onset has occurred by the current time in an individual subject. The methods are applied to some large data sets concerning prostate specific antigen (PSA) as a serial marker for prostate cancer. Rules based on the indices are compared to standard diagnostic criteria through the use of ROC curves adapted for longitudinal data. Copyright © 2000 John Wiley & Sons, Ltd.
ISSN:0277-6715
1097-0258
DOI:10.1002/(SICI)1097-0258(20000229)19:4<617::AID-SIM360>3.0.CO;2-R