| Literature DB >> 27377366 |
Abstract
In this paper, we analyze a two-level latent variable model for longitudinal data from the National Growth and Health Study where surrogate outcomes or biomarkers and covariates are subject to missingness at any of the levels. A conventional method for efficient handling of missing data is to re-express the desired model as a joint distribution of variables, including the biomarkers, that are subject to missingness conditional on all of the covariates that are completely observed, and estimate the joint model by maximum likelihood, which is then transformed to the desired model. The joint model, however, identifies more parameters than desired, in general. We show that the over-identified joint model produces biased estimation of the latent variable model and describe how to impose constraints on the joint model so that it has a one-to-one correspondence with the desired model for unbiased estimation. The constrained joint model handles missing data efficiently under the assumption of ignorable missing data and is estimated by a modified application of the expectation-maximization algorithm.Entities:
Keywords: latent variable; longitudinal data analysis; missing data; multivariate outcomes; random effects; the EM algorithm
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Year: 2016 PMID: 27377366 PMCID: PMC5057187 DOI: 10.1002/sim.7022
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373