Book contents
- Applied Longitudinal Data Analysis for Medical Science
- Applied Longitudinal Data Analysis for Medical Science
- Copyright page
- Dedication
- Content
- Preface
- Acknowledgements
- Chapter 1 Introduction
- Chapter 2 Continuous Outcome Variables
- Chapter 3 Continuous Outcome Variables: Regression-based Methods
- Chapter 4 The Modelling of Time
- Chapter 5 Models to Disentangle the Between- and Within-subjects Relationship
- Chapter 6 Causality in Observational Longitudinal Studies
- Chapter 7 Dichotomous Outcome Variables
- Chapter 8 Categorical and Count Outcome Variables
- Chapter 9 Outcome Variables with Floor or Ceiling Effects
- Chapter 10 Analysis of Longitudinal Intervention Studies
- Chapter 11 Missing Data in Longitudinal Studies
- Chapter 12 Sample Size Calculations
- Chapter 13 Software for Longitudinal Data Analysis
- References
- Index
Chapter 4 - The Modelling of Time
Published online by Cambridge University Press: 20 April 2023
- Applied Longitudinal Data Analysis for Medical Science
- Applied Longitudinal Data Analysis for Medical Science
- Copyright page
- Dedication
- Content
- Preface
- Acknowledgements
- Chapter 1 Introduction
- Chapter 2 Continuous Outcome Variables
- Chapter 3 Continuous Outcome Variables: Regression-based Methods
- Chapter 4 The Modelling of Time
- Chapter 5 Models to Disentangle the Between- and Within-subjects Relationship
- Chapter 6 Causality in Observational Longitudinal Studies
- Chapter 7 Dichotomous Outcome Variables
- Chapter 8 Categorical and Count Outcome Variables
- Chapter 9 Outcome Variables with Floor or Ceiling Effects
- Chapter 10 Analysis of Longitudinal Intervention Studies
- Chapter 11 Missing Data in Longitudinal Studies
- Chapter 12 Sample Size Calculations
- Chapter 13 Software for Longitudinal Data Analysis
- References
- Index
Summary
In Chapter 4, the modelling of the time variable in longitudinal data analysis is discussed. In general, a distinction can be made between time as a continuous variable and time as a categorical variable represented by dummy variables. The latter is only possible in a longitudinal study with fixed time-points. Basically, three different situations are explained. (1) Growth curve analysis; i.e. when the time variable is the covariate of interest. Regarding growth curve analysis, the chapter also includes a discussion about latent class growth curve modelling. (2) The time variable as a potential confounder. When the time variable is a potential confounder it is argued that it is important to distinguish the time variable from age and (3) the time variable as effect modifier. When the time variable is an effect modifier, the interest is either in a different development over time for different groups or in a different relationship between an outcome variable and a covariate in different parts of the longitudinal study. Both situations are discussed in detail. All methods are accompanied by extensive real-life data examples.
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- Applied Longitudinal Data Analysis for Medical ScienceA Practical Guide, pp. 56 - 75Publisher: Cambridge University PressPrint publication year: 2023