| Literature DB >> 25524209 |
R Martina1, R Kay, R van Maanen, A Ridder.
Abstract
Clinical studies in overactive bladder have traditionally used analysis of covariance or nonparametric methods to analyse the number of incontinence episodes and other count data. It is known that if the underlying distributional assumptions of a particular parametric method do not hold, an alternative parametric method may be more efficient than a nonparametric one, which makes no assumptions regarding the underlying distribution of the data. Therefore, there are advantages in using methods based on the Poisson distribution or extensions of that method, which incorporate specific features that provide a modelling framework for count data. One challenge with count data is overdispersion, but methods are available that can account for this through the introduction of random effect terms in the modelling, and it is this modelling framework that leads to the negative binomial distribution. These models can also provide clinicians with a clearer and more appropriate interpretation of treatment effects in terms of rate ratios. In this paper, the previously used parametric and non-parametric approaches are contrasted with those based on Poisson regression and various extensions in trials evaluating solifenacin and mirabegron in patients with overactive bladder. In these applications, negative binomial models are seen to fit the data well.Entities:
Keywords: Poisson regression; count data; negative binomial regression; overdispersion; zero-inflation models
Mesh:
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Year: 2014 PMID: 25524209 DOI: 10.1002/pst.1664
Source DB: PubMed Journal: Pharm Stat ISSN: 1539-1604 Impact factor: 1.894