| Literature DB >> 23504447 |
Armando Teixeira-Pinto1, Sharon-Lise Normand.
Abstract
Biomedical research often involves the measurement of multiple outcomes in different scales (continuous, binary and ordinal). A common approach for the analysis of such data is to ignore the potential correlation among the outcomes and model each outcome separately. This can lead not only to loss of efficiency but also to biased estimates in the presence of missing data. We address the problem of missing data in the context of multiple non-commensurate outcomes. The consequences of missing data when using likelihood and quasi-likelihood methods are described, and an extension of these methods to the situation of missing observations in the outcomes is proposed. Two real data examples illustrate the methodology.Entities:
Keywords: direct maximization; latent variable; maximum likelihood; missing data; mixed outcomes; multivariate; non-commensurate; weighted generalized estimating equations
Year: 2011 PMID: 23504447 PMCID: PMC3595565
Source DB: PubMed Journal: Revstat Stat J ISSN: 1645-6726 Impact factor: 1.250