Abstract

BackgroundWithin longitudinal epidemiological research, ‘count’ outcome variables with an excess of zeros frequently occur. Although these outcomes are frequently analysed with a linear mixed model, or a Poisson mixed model, a two-part mixed model would be better in analysing outcome variables with an excess of zeros. Therefore, objective of this paper was to introduce the relatively ‘new’ method of two-part joint regression modelling in longitudinal data analysis for outcome variables with an excess of zeros, and to compare the performance of this method to current approaches.MethodsWithin an observational longitudinal dataset, we compared three techniques; two ‘standard’ approaches (a linear mixed model, and a Poisson mixed model), and a two-part joint mixed model (a binomial/Poisson mixed distribution model), including random intercepts and random slopes. Model fit indicators, and differences between predicted and observed values were used for comparisons. The analyses were performed with STATA using the GLLAMM procedure.ResultsRegarding the random intercept models, the two-part joint mixed model (binomial/Poisson) performed best. Adding random slopes for time to the models changed the sign of the regression coefficient for both the Poisson mixed model and the two-part joint mixed model (binomial/Poisson) and resulted into a much better fit.ConclusionThis paper showed that a two-part joint mixed model is a more appropriate method to analyse longitudinal data with an excess of zeros compared to a linear mixed model and a Poisson mixed model. However, in a model with random slopes for time a Poisson mixed model also performed remarkably well.

Highlights

  • Within longitudinal epidemiological research, ‘count’ outcome variables with an excess of zeros frequently occur

  • The objective of this paper is to introduce a relatively ‘new’ method of a two-part joint mixed model in longitudinal data analysis for ‘count’ outcome variables with an excess of zeros

  • The model fit was best for the two-part joint mixed model (BIC: 6687.64, means of the squared residuals (MSR): 7.26)

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Summary

Introduction

Within longitudinal epidemiological research, ‘count’ outcome variables with an excess of zeros frequently occur. Objective of this paper was to introduce the relatively ‘new’ method of two-part joint regression modelling in longitudinal data analysis for outcome variables with an excess of zeros, and to compare the performance of this method to current approaches. Within longitudinal epidemiological research, ‘count’ outcome variables frequently occur. Nowadays it is possible to analyse longitudinal ‘count’ outcome variables with advanced statistical techniques such as mixed models. In many situations ‘count’ data does not exactly follow a Poisson distribution; they are often overdispersed, (i.e. the variance of the outcome variable is higher than the mean value). Zeros cannot be log transformed and other computations such as adding ‘1’ to the ‘count’ outcomes with an excess of zeros before log transforming does not solve the problem either

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