A selection approach to multivariate linear mixed models with censored and non-ignorable missing responses
Conference
64th ISI World Statistics Congress
Format: IPS Abstract
Keywords: clinical trials, mcecm algorithm
Session: IPS 92 - Innovative Nonregular Approaches to Statistical Modelling for Complex Data
Tuesday 18 July 2 p.m. - 3:40 p.m. (Canada/Eastern)
Abstract
The analysis of multivariate longitudinal data could encounter some complications due to censorship induced by detection limits of the assay and non-response occurring when participants missed scheduled visits intermittently or discontinued participation. This paper establishes a generalization of the multivariate linear mixed model that can accommodate censored responses and non-ignorable missing outcomes simultaneously. To account for the non-ignorable missingness, the selection approach which decomposes the joint distribution as a marginal distribution for the primary outcome variables and a model describing the missing process conditional on the hypothetical complete data is used. A computationally feasible Monte Carlo expectation conditional maximization (MCECM) algorithm is developed for parameter estimation with the maximum likelihood (ML) method. Furthermore, a general information-based approach is presented to assess the variability of ML estimators. The techniques for the prediction of censored responses and imputation of missing outcomes are also discussed. The methodology is motivated and exemplified by a real dataset concerning HIV-AIDS clinical trials. A simulation study is conducted to examine the performance of the proposed method compared with other traditional approaches.