Subject-specific odds ratios in binomial GLMMs with continuous response
- Authors: SCIANDRA, M; MUGGEO, VMR; LOVISON, G
- Publication year: 2008
- Type: Articolo in rivista (Articolo in rivista)
- Key words: Odds ratio; Random effects; Logistic regression; Dichotomizing; Efficiency
- OA Link: http://hdl.handle.net/10447/34970
Abstract
In a regression context, the dichotomization of a continuous outcome variable is often motivated by the need to express results in terms of the odds ratio, as a measure of association between the response and one or more risk factors. Starting from the recent work of Moser and Coombs (Odds ratios for a continuous outcome variable without dichotomizing, Statistics in Medicine, 2004, 23, 1843-1860), in this article we explore in a mixed model framework the possibility of obtaining odds ratio estimates from a regression linear model without the need of dichotomizing the response variable. It is shown that the odds ratio estimators derived from a linear mixed model outperform those from a binomial generalized linear mixed model, especially when the data exhibit high levels of heterogeneity.