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An appraisal of methods for the analysis of longitudinal ordinal response data with random dropout using a non-homogeneous Markov model

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<mark>Journal publication date</mark>2010
<mark>Journal</mark>Communications in Statistics – Simulation and Computation
Issue number5
Volume39
Number of pages22
Pages (from-to)1027-1048
Publication StatusPublished
<mark>Original language</mark>English

Abstract

There are many methods for analyzing longitudinal ordinal response data with random dropout. These include maximum likelihood (ML), weighted estimating equations (WEEs), and multiple imputations (MI). In this article, using a Markov model where the effect of previous response on the current response is investigated as an ordinal variable, the likelihood is partitioned to simplify the use of existing software. Simulated data, generated to present a three-period longitudinal study with random dropout, are used to compare performance of ML, WEE, and MI methods in terms of standardized bias and coverage probabilities. These estimation methods are applied to a real medical data set.