Drop out is a typical issue in longitudinal studies. When the missingness is non-ignorable, inference based on the observed data only may be biased. This paper is motivated by the Leiden 85+ study, a longitudinal study conducted to analyze the dynamics of cognitive functioning in the elderly. We account for dependence between longitudinal responses from the same subject using time-varying random effects associated with a heterogeneous hidden Markov chain. As several participants in the study drop out prematurely, we introduce a further random effect model to describe the missing data mechanism. The potential dependence between the random effects in the two equations (and, therefore, between the two processes) is introduced through a joint distribution specified via a latent structure approach. The application of the proposal to data from the Leiden 85+ study shows its effectiveness in modeling heterogeneous longitudinal patterns, possibly influenced by the missing data process. Results from a sensitivity analysis show the robustness of the estimates with respect to misspecification of the missing data mechanism. A simulation study provides evidence for the reliability of the inferential conclusions drawn from the analysis of the Leiden 85+ data.

Finite Mixtures of Hidden Markov Models for Longitudinal Responses Subject to Drop out / Marino, M. F.; Alfo', M.. - In: MULTIVARIATE BEHAVIORAL RESEARCH. - ISSN 0027-3171. - 55:5(2020), pp. 647-663. [10.1080/00273171.2019.1660606]

Finite Mixtures of Hidden Markov Models for Longitudinal Responses Subject to Drop out

Marino M. F.
;
Alfo' M.
2020

Abstract

Drop out is a typical issue in longitudinal studies. When the missingness is non-ignorable, inference based on the observed data only may be biased. This paper is motivated by the Leiden 85+ study, a longitudinal study conducted to analyze the dynamics of cognitive functioning in the elderly. We account for dependence between longitudinal responses from the same subject using time-varying random effects associated with a heterogeneous hidden Markov chain. As several participants in the study drop out prematurely, we introduce a further random effect model to describe the missing data mechanism. The potential dependence between the random effects in the two equations (and, therefore, between the two processes) is introduced through a joint distribution specified via a latent structure approach. The application of the proposal to data from the Leiden 85+ study shows its effectiveness in modeling heterogeneous longitudinal patterns, possibly influenced by the missing data process. Results from a sensitivity analysis show the robustness of the estimates with respect to misspecification of the missing data mechanism. A simulation study provides evidence for the reliability of the inferential conclusions drawn from the analysis of the Leiden 85+ data.
2020
informative missingness; Latent Markov models; random effects; repeated observations; sensitivity analysis
01 Pubblicazione su rivista::01a Articolo in rivista
Finite Mixtures of Hidden Markov Models for Longitudinal Responses Subject to Drop out / Marino, M. F.; Alfo', M.. - In: MULTIVARIATE BEHAVIORAL RESEARCH. - ISSN 0027-3171. - 55:5(2020), pp. 647-663. [10.1080/00273171.2019.1660606]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1553274
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