Analyzing longitudinal data and use of the generalized linear model in health and social sciences

Publication date

2019-05-20T17:46:49Z

2019-05-20T17:46:49Z

2016

2019-05-20T17:46:50Z

Abstract

In the health and social sciences, longitudinal data have often been analyzed without taking into account the dependence between observations of the same subject. Furthermore, consideration is rarely given to the fact that longitudinal data may come from a non-normal distribution. In addition to describing the aims and types of longitudinal designs this paper presents three approaches based on generalized estimating equations that do take into account the lack of independence in data, as well as the type of distribution. These approaches are the marginal model (population-average model), the random effects model (subject-specific model), and the transition model (Markov model or auto-correlation model). Finally, these models are applied to empirical data by means of specific procedures included in SAS, namely GENMOD, MIXED, and GLIMMIX.

Document Type

Article


Accepted version

Language

English

Publisher

Springer Verlag

Related items

Versió postprint del document publicat a: https://doi.org/10.1007/s11135-015-0171-7

Quality & Quantity, 2016, vol. 50, num. 2, p. 693-707

https://doi.org/10.1007/s11135-015-0171-7

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(c) Springer Verlag, 2016

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