Quantile regression for censored mixed-effects models with applications to HIV studies.

TitleQuantile regression for censored mixed-effects models with applications to HIV studies.
Publication TypeJournal Article
Year of Publication2015
AuthorsLachos, Victor H., Ming-Hui Chen, Carlos A. Abanto-Valle, and Caio L. N. Azevedo
JournalStat Interface
Volume8
Issue2
Pagination203-215
Date Published2015
ISSN1938-7989
Abstract

HIV RNA viral load measures are often subjected to some upper and lower detection limits depending on the quantification assays. Hence, the responses are either left or right censored. Linear/nonlinear mixed-effects models, with slight modifications to accommodate censoring, are routinely used to analyze this type of data. Usually, the inference procedures are based on normality (or elliptical distribution) assumptions for the random terms. However, those analyses might not provide robust inference when the distribution assumptions are questionable. In this paper, we discuss a fully Bayesian quantile regression inference using Markov Chain Monte Carlo (MCMC) methods for longitudinal data models with random effects and censored responses. Compared to the conventional mean regression approach, quantile regression can characterize the entire conditional distribution of the outcome variable, and is more robust to outliers and misspecification of the error distribution. Under the assumption that the error term follows an asymmetric Laplace distribution, we develop a hierarchical Bayesian model and obtain the posterior distribution of unknown parameters at the th level, with the median regression ( = 0.5) as a special case. The proposed procedures are illustrated with two HIV AIDS studies on viral loads that were initially analyzed using the typical normal (censored) mean regression mixed-effects models, as well as a simulation study.

DOI10.4310/SII.2015.v8.n2.a8
Alternate JournalStat Interface
Original PublicationQuantile regression for censored mixed-effects models with applications to HIV studies.
PubMed ID26753050
PubMed Central IDPMC4706236
Grant ListP01 CA142538 / CA / NCI NIH HHS / United States
R01 CA074015 / CA / NCI NIH HHS / United States
R01 GM070335 / GM / NIGMS NIH HHS / United States
Project: