| Literature DB >> 26237289 |
Xiaoyan Sun1, Limin Peng1, Amita Manatunga1, Michele Marcus2.
Abstract
In many observational longitudinal studies, the outcome of interest presents a skewed distribution, is subject to censoring due to detection limit or other reasons, and is observed at irregular times that may follow a outcome-dependent pattern. In this work, we consider quantile regression modeling of such longitudinal data, because quantile regression is generally robust in handling skewed and censored outcomes and is flexible to accommodate dynamic covariate-outcome relationships. Specifically, we study a longitudinal quantile regression model that specifies covariate effects on the marginal quantiles of the longitudinal outcome. Such a model is easy to interpret and can accommodate dynamic outcome profile changes over time. We propose estimation and inference procedures that can appropriately account for censoring and irregular outcome-dependent follow-up. Our proposals can be readily implemented based on existing software for quantile regression. We establish the asymptotic properties of the proposed estimator, including uniform consistency and weak convergence. Extensive simulations suggest good finite-sample performance of the new method. We also present an analysis of data from a long-term study of a population exposed to polybrominated biphenyls (PBB), which uncovers an inhomogeneous PBB elimination pattern that would not be detected by traditional longitudinal data analysis.Entities:
Keywords: Censored quantile regression; Irregular outcome-dependent follow-up; Longitudinal data; Proportional intensity model; Recurrent events
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Year: 2015 PMID: 26237289 PMCID: PMC4740290 DOI: 10.1111/biom.12367
Source DB: PubMed Journal: Biometrics ISSN: 0006-341X Impact factor: 2.571