A mnotone data augmentation algorithm for longitudinal data analysis via multivariate skew-t, skew-normal or t distributions

06/11/2019
by   Yongqiang Tang, et al.
0

The mixed effects model for repeated measures (MMRM) has been widely used for the analysis of longitudinal clinical data collected at a number of fixed time points. We propose a robust extension of the MMRM for skewed and heavy-tailed data on basis of the multivariate skew-t distribution, and it includes the multivariate normal, t, and skew-normal distributions as special cases. An efficient Markov chain Monte Carlo algorithm is developed using the monotone data augmentation and parameter expansion techniques. We employ the algorithm to perform controlled pattern imputations for sensitivity analyses of longitudinal clinical trials with nonignorable dropouts. The proposed methods are illustrated by real data analyses. Sample SAS programs for the analyses are provided in the online supplementary material.

READ FULL TEXT
research
10/15/2022

A Joint Modeling Approach for Clustering Mixed-Type Multivariate Longitudinal Data: Application to the CHILD Cohort Study

In epidemiological and clinical studies, identifying patients' phenotype...
research
12/04/2022

Convergence Analysis of Data Augmentation Algorithms for Bayesian Robust Multivariate Linear Regression with Incomplete Data

Gaussian mixtures are commonly used for modeling heavy-tailed error dist...
research
12/17/2020

Bayesian semiparametric modelling of covariance matrices for multivariate longitudinal data

The article develops marginal models for multivariate longitudinal respo...
research
12/19/2017

Mixed-effects models using the normal and the Laplace distributions: A 2 × 2 convolution scheme for applied research

In statistical applications, the normal and the Laplace distributions ar...
research
06/28/2019

Fast and Exact Simulation of Multivariate Normal and Wishart Random Variables with Box Constraints

Models which include domain constraints occur in myriad contexts such as...

Please sign up or login with your details

Forgot password? Click here to reset