Quantile regression provides a detailed and robust picture of the distribution of a response variable, conditional on a set of observed covariates. Recently, it has be been extended to the analysis of longitudinal continuous outcomes using either time-constant or time-varying random parameters. However, in real-life data, we frequently observe both temporal shocks in the overall trend and individual-specific heterogeneity in model parameters. A benchmark dataset on HIV progression gives a clear example. Here, the evolution of the CD4 log counts exhibits both sudden temporal changes in the overall trend and heterogeneity in the effect of the time since seroconversion on the response dynamics. To accommodate such situations, we propose a quantile regression model, where time-varying and time-constant random coefficients are jointly considered. Since observed data may be incomplete due to early drop-out, we also extend the proposed model in a pattern mixture perspective. We assess the performance of the proposals via a large-scale simulation study and the analysis of the CD4 count data.

Mixed hidden Markov quantile regression models for longitudinal data with possibly incomplete sequences / Marino, Maria Francesca; Tzavidis, Nikos; Alfo', Marco. - In: STATISTICAL METHODS IN MEDICAL RESEARCH. - ISSN 0962-2802. - STAMPA. - 27:(2018), pp. 2231-2246. [10.1177/0962280216678433]

Mixed hidden Markov quantile regression models for longitudinal data with possibly incomplete sequences

ALFO', Marco
2018

Abstract

Quantile regression provides a detailed and robust picture of the distribution of a response variable, conditional on a set of observed covariates. Recently, it has be been extended to the analysis of longitudinal continuous outcomes using either time-constant or time-varying random parameters. However, in real-life data, we frequently observe both temporal shocks in the overall trend and individual-specific heterogeneity in model parameters. A benchmark dataset on HIV progression gives a clear example. Here, the evolution of the CD4 log counts exhibits both sudden temporal changes in the overall trend and heterogeneity in the effect of the time since seroconversion on the response dynamics. To accommodate such situations, we propose a quantile regression model, where time-varying and time-constant random coefficients are jointly considered. Since observed data may be incomplete due to early drop-out, we also extend the proposed model in a pattern mixture perspective. We assess the performance of the proposals via a large-scale simulation study and the analysis of the CD4 count data.
2018
Latent Markov models; informative drop-out; latent drop-out classes; missing data; mixed models; non-parametric maximum likelihood
01 Pubblicazione su rivista::01a Articolo in rivista
Mixed hidden Markov quantile regression models for longitudinal data with possibly incomplete sequences / Marino, Maria Francesca; Tzavidis, Nikos; Alfo', Marco. - In: STATISTICAL METHODS IN MEDICAL RESEARCH. - ISSN 0962-2802. - STAMPA. - 27:(2018), pp. 2231-2246. [10.1177/0962280216678433]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/930489
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