Literature DB >> 23698867

Sensitivity analysis of incomplete longitudinal data departing from the missing at random assumption: Methodology and application in a clinical trial with drop-outs.

M Moreno-Betancur1, M Chavance2.   

Abstract

Statistical analyses of longitudinal data with drop-outs based on direct likelihood, and using all the available data, provide unbiased and fully efficient estimates under some assumptions about the drop-out mechanism. Unfortunately, these assumptions can never be tested from the data. Thus, sensitivity analyses should be routinely performed to assess the robustness of inferences to departures from these assumptions. However, each specific scientific context requires different considerations when setting up such an analysis, no standard method exists and this is still an active area of research. We propose a flexible procedure to perform sensitivity analyses when dealing with continuous outcomes, which are described by a linear mixed model in an initial likelihood analysis. The methodology relies on the pattern-mixture model factorisation of the full data likelihood and was validated in a simulation study. The approach was prompted by a randomised clinical trial for sleep-maintenance insomnia treatment. This case study illustrated the practical value of our approach and underlined the need for sensitivity analyses when analysing data with drop-outs: some of the conclusions from the initial analysis were shown to be reliable, while others were found to be fragile and strongly dependent on modelling assumptions. R code for implementation is provided.
© The Author(s) 2013.

Entities:  

Keywords:  Missing data; drop-outs; linear mixed model; longitudinal data; multiple imputation; pattern-mixture model; sensitivity analysis

Mesh:

Year:  2013        PMID: 23698867     DOI: 10.1177/0962280213490014

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  13 in total

1.  Survival analysis with time-dependent covariates subject to missing data or measurement error: Multiple Imputation for Joint Modeling (MIJM).

Authors:  Margarita Moreno-Betancur; John B Carlin; Samuel L Brilleman; Stephanie K Tanamas; Anna Peeters; Rory Wolfe
Journal:  Biostatistics       Date:  2018-10-01       Impact factor: 5.899

2.  An R package for model fitting, model selection and the simulation for longitudinal data with dropout missingness.

Authors:  Cong Xu; Zheng Li; Yuan Xue; Lijun Zhang; Ming Wang
Journal:  Commun Stat Simul Comput       Date:  2018-10-16       Impact factor: 1.118

3.  Longitudinal associations between different dementia diagnoses and medication use jointly accounting for dropout.

Authors:  George O Agogo; Christine M Ramsey; Danijela Gnjidic; Daniela C Moga; Heather Allore
Journal:  Int Psychogeriatr       Date:  2018-04-18       Impact factor: 3.878

4.  Analyses of Sensitivity to the Missing-at-Random Assumption Using Multiple Imputation With Delta Adjustment: Application to a Tuberculosis/HIV Prevalence Survey With Incomplete HIV-Status Data.

Authors:  Finbarr P Leacy; Sian Floyd; Tom A Yates; Ian R White
Journal:  Am J Epidemiol       Date:  2017-02-15       Impact factor: 4.897

5.  A comparison of multiple imputation methods for handling missing values in longitudinal data in the presence of a time-varying covariate with a non-linear association with time: a simulation study.

Authors:  Anurika Priyanjali De Silva; Margarita Moreno-Betancur; Alysha Madhu De Livera; Katherine Jane Lee; Julie Anne Simpson
Journal:  BMC Med Res Methodol       Date:  2017-07-25       Impact factor: 4.615

6.  Comparison of Different LGM-Based Methods with MAR and MNAR Dropout Data.

Authors:  Meijuan Li; Nan Chen; Yang Cui; Hongyun Liu
Journal:  Front Psychol       Date:  2017-05-12

7.  Canonical Causal Diagrams to Guide the Treatment of Missing Data in Epidemiologic Studies.

Authors:  Margarita Moreno-Betancur; Katherine J Lee; Finbarr P Leacy; Ian R White; Julie A Simpson; John B Carlin
Journal:  Am J Epidemiol       Date:  2018-12-01       Impact factor: 4.897

8.  Information-anchored sensitivity analysis: theory and application.

Authors:  Suzie Cro; James R Carpenter; Michael G Kenward
Journal:  J R Stat Soc Ser A Stat Soc       Date:  2018-11-16       Impact factor: 2.483

9.  To what degree does the missing-data technique influence the estimated growth in learning strategies over time? A tutorial example of sensitivity analysis for longitudinal data.

Authors:  Liesje Coertjens; Vincent Donche; Sven De Maeyer; Gert Vanthournout; Peter Van Petegem
Journal:  PLoS One       Date:  2017-09-13       Impact factor: 3.240

10.  On the use of the not-at-random fully conditional specification (NARFCS) procedure in practice.

Authors:  Daniel Mark Tompsett; Finbarr Leacy; Margarita Moreno-Betancur; Jon Heron; Ian R White
Journal:  Stat Med       Date:  2018-04-02       Impact factor: 2.373

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