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Please use this identifier to cite or link to this item: http://hdl.handle.net/1959.14/113650

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Title
Semi-parametric risk prediction models for recurrent cardiovascular events in the LIPID study
Related
BMC medical research methodology, Vol. 10, No. 27 (2010), p.1-9
DOI
10.1186/1471-2288-10-27
Publisher
BioMed Central
Date
2010
FoR/RFCD Code(s)
010402 Biostatistics
Author/Creator
Cui, Jisheng
Author/Creator
Forbes, Andrew
Author/Creator
Kirby, Adrienne
Author/Creator
Marschner, Ian
Author/Creator
Simes, John
Author/Creator
Hunt, David
Author/Creator
West, Malcolm
Author/Creator
Tonkin, Andrew
Description
Background: Traditional methods for analyzing clinical and epidemiological cohort study data have been focused on the first occurrence of a health outcome. However, in many situations, recurrent event data are frequently observed. It is inefficient to use methods for the analysis of first events to analyse recurrent event data. Methods: We applied several semi-parametric proportional hazards models to analyze the risk of recurrent myocardial infarction (MI) events based on data from a very large randomized placebo-controlled trial of cholesterol-lowering drug. The backward selection procedure was used to select the significant risk factors in a model. The best fitting model was selected using the log-likelihood ratio test, Akaike Information and Bayesian Information Criteria. Results: A total of 8557 persons were included in the LIPID study. Risk factors such as age, smoking status, total cholesterol and high density lipoprotein cholesterol levels, qualifying event for the acute coronary syndrome, revascularization, history of stroke or diabetes, angina grade and treatment with pravastatin were significant for development of both first and subsequent MI events. No significant difference was found for the effects of these risk factors between the first and subsequent MI events. The significant risk factors selected in this study were the same as those selected by the parametric conditional frailty model. Estimates of the relative risks and 95% confidence intervals were also similar between these two methods. Conclusions: Our study shows the usefulness and convenience of the semi-parametric proportional hazards models for the analysis of recurrent event data, especially in estimation of regression coefficients and cumulative risks.
Description
9 page(s)
Subject Keyword
010402 Biostatistics
Resource Type
journal article
Organisation
Macquarie University. Dept. of Statistics

Identifier
http://hdl.handle.net/1959.14/113650
Identifier
ISSN:1471-2288
Identifier
mq-rm-2010000382
Language
eng
Reviewed
Reviewed
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Subject
"BMC medical research methodology"
 
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