Literature DB >> 20100810

A comment on analyzing addictive behaviors over time.

Kristin L Schneider1, Donald Hedeker, Katherine C Bailey, Jessica W Cook, Bonnie Spring.   

Abstract

INTRODUCTION: If not handled appropriately, missing data can result in biased estimates and, quite possibly, incorrect conclusions about treatment efficacy. This article aimed to demonstrate how ordinary use of generalized estimating equations (GEE) can be problematic if the assumption of missing completely at random (MCAR) is not met.
METHODS: We tested whether results differed for different analytic methods depending on whether the MCAR assumption was violated. This example used data from a published randomized controlled trial examining whether varying the timing of a weight management intervention, in concert with smoking cessation, improved cessation rates for adult female smokers. Participants were 284 women with at least one report of smoking status during Visits 4-16. Smoking status was assessed at each visit via self-report and biologically verified using expired carbon monoxide.
RESULTS: Results showed that while the GEE analysis found differences in smoking status between conditions, tests of the MCAR assumption demonstrated that it was not valid for this dataset. Additional analyses using tests that do not require the MCAR assumption found no differences between conditions. Thus, GEE is not an appropriate choice for this analysis. DISCUSSION: While GEE is an appropriate technique for analyzing dichotomous data when the MCAR assumption is not violated, weighted GEE or mixed-effects logistic regression are more appropriate when the missing data mechanism is not MCAR.

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Year:  2010        PMID: 20100810      PMCID: PMC2847069          DOI: 10.1093/ntr/ntp213

Source DB:  PubMed          Journal:  Nicotine Tob Res        ISSN: 1462-2203            Impact factor:   4.244


  14 in total

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Authors:  G Touloumi; A G Babiker; S J Pocock; J H Darbyshire
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Review 2.  Handling drop-out in longitudinal studies.

Authors:  Joseph W Hogan; Jason Roy; Christina Korkontzelou
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Review 3.  Smoking cessation: what have we learned over the past decade?

Authors:  E Lichtenstein; R E Glasgow
Journal:  J Consult Clin Psychol       Date:  1992-08

4.  Assessing missing data assumptions in longitudinal studies: an example using a smoking cessation trial.

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Journal:  Drug Alcohol Depend       Date:  2005-03-07       Impact factor: 4.492

5.  Randomized controlled trial for behavioral smoking and weight control treatment: effect of concurrent versus sequential intervention.

Authors:  Bonnie Spring; Sherry Pagoto; Regina Pingitore; Neal Doran; Kristin Schneider; Don Hedeker
Journal:  J Consult Clin Psychol       Date:  2004-10

6.  Advanced statistics: missing data in clinical research--part 1: an introduction and conceptual framework.

Authors:  Jason S Haukoos; Craig D Newgard
Journal:  Acad Emerg Med       Date:  2007-05-30       Impact factor: 3.451

7.  Bayesian quantile regression for longitudinal studies with nonignorable missing data.

Authors:  Ying Yuan; Guosheng Yin
Journal:  Biometrics       Date:  2009-05-12       Impact factor: 2.571

8.  Comparison of population-averaged and subject-specific approaches for analyzing repeated binary outcomes.

Authors:  F B Hu; J Goldberg; D Hedeker; B R Flay; M A Pentz
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9.  Effect of depressive symptoms on smoking abstinence and treatment adherence among smokers with a history of alcohol dependence.

Authors:  Christi A Patten; Amanda A Drews; Mark G Myers; John E Martin; Troy D Wolter
Journal:  Psychol Addict Behav       Date:  2002-06

10.  Analysis of binary outcomes with missing data: missing = smoking, last observation carried forward, and a little multiple imputation.

Authors:  Donald Hedeker; Robin J Mermelstein; Hakan Demirtas
Journal:  Addiction       Date:  2007-10       Impact factor: 6.526

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  6 in total

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2.  Intensive intervention for alcohol-dependent smokers in early recovery: a randomized trial.

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3.  Enhancing tobacco quitline effectiveness: identifying a superior pharmacotherapy adjuvant.

Authors:  Stevens S Smith; Paula A Keller; Kate H Kobinsky; Timothy B Baker; David L Fraser; Terry Bush; Brooke Magnusson; Susan M Zbikowski; Timothy A McAfee; Michael C Fiore
Journal:  Nicotine Tob Res       Date:  2012-09-19       Impact factor: 4.244

4.  A randomized clinical trial of smoking cessation treatments provided in HIV clinical care settings.

Authors:  Gary L Humfleet; Sharon M Hall; Kevin L Delucchi; James W Dilley
Journal:  Nicotine Tob Res       Date:  2013-02-19       Impact factor: 4.244

5.  Alcohol and marijuana use in the context of tobacco dependence treatment: impact on outcome and mediation of effect.

Authors:  Peter S Hendricks; Kevin L Delucchi; Gary L Humfleet; Sharon M Hall
Journal:  Nicotine Tob Res       Date:  2012-01-17       Impact factor: 4.244

6.  Changes in cannabis use, exposure, and health perceptions following legalization of adult recreational cannabis use in California: a prospective observational study.

Authors:  Kathleen Gali; Sandra J Winter; Naina J Ahuja; Erica Frank; Judith J Prochaska
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  6 in total

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