Literature DB >> 11129486

Reparameterizing the pattern mixture model for sensitivity analyses under informative dropout.

M J Daniels1, J W Hogan.   

Abstract

Pattern mixture models are frequently used to analyze longitudinal data where missingness is induced by dropout. For measured responses, it is typical to model the complete data as a mixture of multivariate normal distributions, where mixing is done over the dropout distribution. Fully parameterized pattern mixture models are not identified by incomplete data; Little (1993, Journal of the American Statistical Association 88, 125-134) has characterized several identifying restrictions that can be used for model fitting. We propose a reparameterization of the pattern mixture model that allows investigation of sensitivity to assumptions about nonidentified parameters in both the mean and variance, allows consideration of a wide range of nonignorable missing-data mechanisms, and has intuitive appeal for eliciting plausible missing-data mechanisms. The parameterization makes clear an advantage of pattern mixture models over parametric selection models, namely that the missing-data mechanism can be varied without affecting the marginal distribution of the observed data. To illustrate the utility of the new parameterization, we analyze data from a recent clinical trial of growth hormone for maintaining muscle strength in the elderly. Dropout occurs at a high rate and is potentially informative. We undertake a detailed sensitivity analysis to understand the impact of missing-data assumptions on the inference about the effects of growth hormone on muscle strength.

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Year:  2000        PMID: 11129486     DOI: 10.1111/j.0006-341x.2000.01241.x

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  27 in total

1.  A Bayesian Shrinkage Model for Incomplete Longitudinal Binary Data with Application to the Breast Cancer Prevention Trial.

Authors:  C Wang; M J Daniels; D O Scharfstein; S Land
Journal:  J Am Stat Assoc       Date:  2010-12       Impact factor: 5.033

2.  Incorporating prior beliefs about selection bias into the analysis of randomized trials with missing outcomes.

Authors:  Daniel O Scharfstein; Michael J Daniels; James M Robins
Journal:  Biostatistics       Date:  2003-10       Impact factor: 5.899

3.  A Bayesian model for time-to-event data with informative censoring.

Authors:  Niko A Kaciroti; Trivellore E Raghunathan; Jeremy M G Taylor; Stevo Julius
Journal:  Biostatistics       Date:  2012-01-04       Impact factor: 5.899

4.  Why missing data matter in the longitudinal study of adolescent development: using the 4-H Study to understand the uses of different missing data methods.

Authors:  Helena Jelicić; Erin Phelps; Richard M Lerner
Journal:  J Youth Adolesc       Date:  2010-05-06

5.  A Bayesian model for longitudinal count data with non-ignorable dropout.

Authors:  Niko A Kaciroti; Trivellore E Raghunathan; M Anthony Schork; Noreen M Clark
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2008-12-01       Impact factor: 1.864

6.  Mixtures of varying coefficient models for longitudinal data with discrete or continuous nonignorable dropout.

Authors:  Joseph W Hogan; Xihong Lin; Benjamin Herman
Journal:  Biometrics       Date:  2004-12       Impact factor: 2.571

7.  On estimation of vaccine efficacy using validation samples with selection bias.

Authors:  Daniel O Scharfstein; M Elizabeth Halloran; Haitao Chu; Michael J Daniels
Journal:  Biostatistics       Date:  2006-03-23       Impact factor: 5.899

8.  Design of the Rural LEAP randomized trial: An evaluation of extended-care programs for weight management delivered via group or individual telephone counseling.

Authors:  Michael G Perri; Aviva H Ariel-Donges; Meena N Shankar; Marian C Limacher; Michael J Daniels; David M Janicke; Kathryn M Ross; Linda B Bobroff; A Daniel Martin; Tiffany A Radcliff; Christie A Befort
Journal:  Contemp Clin Trials       Date:  2018-11-06       Impact factor: 2.226

9.  Bayesian latent-class mixed-effect hybrid models for dyadic longitudinal data with non-ignorable dropouts.

Authors:  Jaeil Ahn; Suyu Liu; Wenyi Wang; Ying Yuan
Journal:  Biometrics       Date:  2013-11-06       Impact factor: 2.571

10.  A mean score method for sensitivity analysis to departures from the missing at random assumption in randomised trials.

Authors:  Ian R White; James Carpenter; Nicholas J Horton
Journal:  Stat Sin       Date:  2018-10       Impact factor: 1.261

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