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RESEARCH PRODUCT
Comparison of the Andersen–Gill model with poisson and negative binomial regression on recurrent event data
Antje Jahn-eimermachersubject
Statistics and ProbabilityApplied MathematicsPoisson binomial distributionCoverage probabilityNegative binomial distributionRegression analysisPoisson distributionComputational Mathematicssymbols.namesakeComputational Theory and MathematicsStatisticsEconometricssymbolsZero-inflated modelPoisson regressionMathematicsCount datadescription
Many generalizations of the Cox proportional hazard method have been elaborated to analyse recurrent event data. The Andersen-Gill model was proposed to handle event data following Poisson processes. This method is compared with non-survival approaches, such as Poisson and negative binomial regression. The comparison is performed on data simulated according to various event-generating processes and differing in subject heterogeneity. When robust standard error estimates are applied, for Poisson processes the Andersen-Gill approach is comparable to a negative binomial regression, whereas the poisson regression has comparable coverage probabilities of confidence intervals, but increased type I error rates; however, none of the methods can generate unbiased parameter estimates with data violating the independent increment assumption. These findings are illustrated by data from a clinical trial of the efficacy of a new pneumococcal vaccine for prevention of otitis media.
year | journal | country | edition | language |
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2008-07-01 | Computational Statistics & Data Analysis |