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Multi‐stage transitional models with random effects and their application to the Einstein aging study
Author(s) -
Song Changhong,
Kuo Lynn,
Derby Carol A.,
Lipton Richard B.,
Hall Charles B.
Publication year - 2011
Publication title -
biometrical journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.108
H-Index - 63
eISSN - 1521-4036
pISSN - 0323-3847
DOI - 10.1002/bimj.200900259
Subject(s) - akaike information criterion , odds , covariate , logistic regression , dementia , goodness of fit , statistics , econometrics , cognition , random effects model , logit , ordered logit , psychology , mathematics , medicine , psychiatry , disease , meta analysis , pathology
Longitudinal studies of aging often gather repeated observations of cognitive status to describe the development of dementia and to assess the influence of risk factors. Clinical progression to dementia is often conceptualized by a multi‐stage model of several transitions that synthesizes time‐varying effects. In this study, we assess the influence of risk factors on the transitions among three cognitive status: cognitive stability (normal cognition for age), memory impairment, and clinical dementia. We have developed a shared random effects model that not only links the propensity of transitions and to the probability of informative missingness due to death, but also incorporates heterogeneous transition between subjects. We evaluate four approaches using generalized logit and four using proportional odds models to the first‐order Markov transition probabilities as a function of covariates. Random effects were incorporated into these models to account for within‐subject correlations. Data from the Einstein Aging Study are used to evaluate the goodness‐of‐fit of these models using the Akaike information criterion. The best fitting model for each type (generalized logit and proportional odds) is recommended and their results are discussed in more details.

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