Literature DB >> 21389091

Using causal diagrams to guide analysis in missing data problems.

Rhian M Daniel1, Michael G Kenward, Simon N Cousens, Bianca L De Stavola.   

Abstract

Estimating causal effects from incomplete data requires additional and inherently untestable assumptions regarding the mechanism giving rise to the missing data. We show that using causal diagrams to represent these additional assumptions both complements and clarifies some of the central issues in missing data theory, such as Rubin's classification of missingness mechanisms (as missing completely at random (MCAR), missing at random (MAR) or missing not at random (MNAR)) and the circumstances in which causal effects can be estimated without bias by analysing only the subjects with complete data. In doing so, we formally extend the back-door criterion of Pearl and others for use in incomplete data examples. These ideas are illustrated with an example drawn from an occupational cohort study of the effect of cosmic radiation on skin cancer incidence.

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Year:  2011        PMID: 21389091     DOI: 10.1177/0962280210394469

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


  52 in total

1.  Imputation approaches for potential outcomes in causal inference.

Authors:  Daniel Westreich; Jessie K Edwards; Stephen R Cole; Robert W Platt; Sunni L Mumford; Enrique F Schisterman
Journal:  Int J Epidemiol       Date:  2015-07-25       Impact factor: 7.196

2.  Who is in this study, anyway? Guidelines for a useful Table 1.

Authors:  Eleanor Hayes-Larson; Katrina L Kezios; Stephen J Mooney; Gina Lovasi
Journal:  J Clin Epidemiol       Date:  2019-06-20       Impact factor: 6.437

3.  Prevalent tuberculosis and mortality among HAART initiators.

Authors:  Daniel Westreich; Matthew P Fox; Annelies Van Rie; Mhairi Maskew
Journal:  AIDS       Date:  2012-03-27       Impact factor: 4.177

4.  Diagnosing Covariate Balance Across Levels of Right-Censoring Before and After Application of Inverse-Probability-of-Censoring Weights.

Authors:  John W Jackson
Journal:  Am J Epidemiol       Date:  2019-12-31       Impact factor: 4.897

5.  When Is a Complete-Case Approach to Missing Data Valid? The Importance of Effect-Measure Modification.

Authors:  Rachael K Ross; Alexander Breskin; Daniel Westreich
Journal:  Am J Epidemiol       Date:  2020-12-01       Impact factor: 4.897

6.  Assessing the Potential for Bias From Nonresponse to a Study Follow-up Interview: An Example From the Agricultural Health Study.

Authors:  Jessica L Rinsky; David B Richardson; Steve Wing; John D Beard; Michael Alavanja; Laura E Beane Freeman; Honglei Chen; Paul K Henneberger; Freya Kamel; Dale P Sandler; Jane A Hoppin
Journal:  Am J Epidemiol       Date:  2017-08-15       Impact factor: 4.897

7.  Transportability of Trial Results Using Inverse Odds of Sampling Weights.

Authors:  Daniel Westreich; Jessie K Edwards; Catherine R Lesko; Elizabeth Stuart; Stephen R Cole
Journal:  Am J Epidemiol       Date:  2017-10-15       Impact factor: 4.897

8.  Target Validity and the Hierarchy of Study Designs.

Authors:  Daniel Westreich; Jessie K Edwards; Catherine R Lesko; Stephen R Cole; Elizabeth A Stuart
Journal:  Am J Epidemiol       Date:  2019-02-01       Impact factor: 4.897

9.  Statistical analysis with missing exposure data measured by proxy respondents: a misclassification problem within a missing-data problem.

Authors:  Michelle Shardell; Gregory E Hicks
Journal:  Stat Med       Date:  2014-06-17       Impact factor: 2.373

10.  Are all biases missing data problems?

Authors:  Chanelle J Howe; Lauren E Cain; Joseph W Hogan
Journal:  Curr Epidemiol Rep       Date:  2015-07-12
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