Literature DB >> 20029935

Correction of bias from non-random missing longitudinal data using auxiliary information.

Cuiling Wang1, Charles B Hall.   

Abstract

Missing data are common in longitudinal studies due to drop-out, loss to follow-up, and death. Likelihood-based mixed effects models for longitudinal data give valid estimates when the data are missing at random (MAR). These assumptions, however, are not testable without further information. In some studies, there is additional information available in the form of an auxiliary variable known to be correlated with the missing outcome of interest. Availability of such auxiliary information provides us with an opportunity to test the MAR assumption. If the MAR assumption is violated, such information can be utilized to reduce or eliminate bias when the missing data process depends on the unobserved outcome through the auxiliary information. We compare two methods of utilizing the auxiliary information: joint modeling of the outcome of interest and the auxiliary variable, and multiple imputation (MI). Simulation studies are performed to examine the two methods. The likelihood-based joint modeling approach is consistent and most efficient when correctly specified. However, mis-specification of the joint distribution can lead to biased results. MI is slightly less efficient than a correct joint modeling approach and can also be biased when the imputation model is mis-specified, though it is more robust to mis-specification of the imputation distribution when all the variables affecting the missing data mechanism and the missing outcome are included in the imputation model. An example is presented from a dementia screening study. Copyright (c) 2009 John Wiley & Sons, Ltd.

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Year:  2010        PMID: 20029935      PMCID: PMC4162134          DOI: 10.1002/sim.3821

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  6 in total

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Authors:  M Liu; J M Taylor; T R Belin
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2.  A comparison of inclusive and restrictive strategies in modern missing data procedures.

Authors:  L M Collins; J L Schafer; C M Kam
Journal:  Psychol Methods       Date:  2001-12

3.  Multiple imputation of discrete and continuous data by fully conditional specification.

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Journal:  Stat Methods Med Res       Date:  2007-06       Impact factor: 3.021

4.  The Clinical Dementia Rating (CDR): current version and scoring rules.

Authors:  J C Morris
Journal:  Neurology       Date:  1993-11       Impact factor: 9.910

5.  Random-effects models for longitudinal data.

Authors:  N M Laird; J H Ware
Journal:  Biometrics       Date:  1982-12       Impact factor: 2.571

6.  Primary care screen for early dementia.

Authors:  Ellen Grober; Charles Hall; Richard B Lipton; Jeanne A Teresi
Journal:  J Am Geriatr Soc       Date:  2007-12-27       Impact factor: 5.562

  6 in total
  6 in total

1.  Brain MRI markers and dropout in a longitudinal study of cognitive aging: the Three-City Dijon Study.

Authors:  M Maria Glymour; Geneviève Chêne; Christophe Tzourio; Carole Dufouil
Journal:  Neurology       Date:  2012-09-12       Impact factor: 9.910

2.  Correcting Bias Caused by Missing Data in the Estimate of the Effect of Apolipoprotein ε4 on Cognitive Decline.

Authors:  Charles B Hall; Richard B Lipton; Mindy J Katz; Cuiling Wang
Journal:  J Int Neuropsychol Soc       Date:  2014-11-12       Impact factor: 2.892

3.  Non-ignorable loss to follow-up: correcting mortality estimates based on additional outcome ascertainment.

Authors:  M Schomaker; T Gsponer; J Estill; M Fox; A Boulle
Journal:  Stat Med       Date:  2013-07-22       Impact factor: 2.373

4.  Should multiple imputation be the method of choice for handling missing data in randomized trials?

Authors:  Thomas R Sullivan; Ian R White; Amy B Salter; Philip Ryan; Katherine J Lee
Journal:  Stat Methods Med Res       Date:  2016-12-19       Impact factor: 3.021

5.  Does pattern mixture modelling reduce bias due to informative attrition compared to fitting a mixed effects model to the available cases or data imputed using multiple imputation?: a simulation study.

Authors:  Catherine A Welch; Séverine Sabia; Eric Brunner; Mika Kivimäki; Martin J Shipley
Journal:  BMC Med Res Methodol       Date:  2018-08-29       Impact factor: 4.615

6.  Multiple imputation using linked proxy outcome data resulted in important bias reduction and efficiency gains: a simulation study.

Authors:  R P Cornish; J Macleod; J R Carpenter; K Tilling
Journal:  Emerg Themes Epidemiol       Date:  2017-12-19
  6 in total

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