| Literature DB >> 28729894 |
Francis Erebholo1, Paul Bezandry2, Victor Apprey3, John Kwagyan3,4.
Abstract
The problem of incomplete data is a common phenomenon in research that involves the longitudinal design approach. We investigate and develop a likelihood-based approach for incomplete longitudinal binary data using the disposition model when the missing value mechanism is non-ignorable. We combined Markov's transition and a logistic regression model to build the dropout process and model the response using conditional logistic regression model. By holding the missingness parameter that is weakly identified constant, we analyzed their effects through a sensitivity analysis as the estimation of parameters in MLE for non-ignorable missing data is not generally plausible. An application of our approach to Schizophrenia clinical trial is presented.Entities:
Keywords: Binary data; Disposition model; Dropout mechanism; Maximum Likelihood Estimation; Non-ignorable missingness
Year: 2016 PMID: 28729894 PMCID: PMC5515546
Source DB: PubMed Journal: Appl Appl Math ISSN: 1932-9466