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Mixed multivariate generalized linear models for assessing lower-limb arterial stenoses.

Cengiz, MA; Percy, DF

Authors

MA Cengiz

DF Percy



Abstract

Experiments and observational studies often involve gathering information on several response variables, enabling us to model their dependence on observable predictor variables. Despite associations between the response variables, they are often analysed separately using general and generalized linear models. This paper investigates applications of multivariate regression analysis to improve the accuracy of predictions and decisions, in the specific context of diagnosing arterial stenoses in human legs. Two basic models are developed for this application, using (i) four binary responses and (ii) a mixture of two binary and two normal responses. The results clearly demonstrate the potential advantages offered by this approach.

Citation

Cengiz, M., & Percy, D. (2001). Mixed multivariate generalized linear models for assessing lower-limb arterial stenoses. Statistics in Medicine, 20(11), 1663-1679. https://doi.org/10.1002/sim.924

Journal Article Type Article
Publication Date Jun 1, 2001
Deposit Date Aug 21, 2007
Journal Statistics in Medicine
Print ISSN 0277-6715
Publisher Wiley
Peer Reviewed Peer Reviewed
Volume 20
Issue 11
Pages 1663-1679
DOI https://doi.org/10.1002/sim.924