Literature DB >> 19718652

Comparison of several imputation methods for missing baseline data in propensity scores analysis of binary outcome.

Brenda J Crowe1, Ilya A Lipkovich, Ouhong Wang.   

Abstract

We performed a simulation study comparing the statistical properties of the estimated log odds ratio from propensity scores analyses of a binary response variable, in which missing baseline data had been imputed using a simple imputation scheme (Treatment Mean Imputation), compared with three ways of performing multiple imputation (MI) and with a Complete Case analysis. MI that included treatment (treated/untreated) and outcome (for our analyses, outcome was adverse event [yes/no]) in the imputer's model had the best statistical properties of the imputation schemes we studied. MI is feasible to use in situations where one has just a few outcomes to analyze. We also found that Treatment Mean Imputation performed quite well and is a reasonable alternative to MI in situations where it is not feasible to use MI. Treatment Mean Imputation performed better than MI methods that did not include both the treatment and outcome in the imputer's model.
Copyright © 2009 John Wiley & Sons, Ltd.

Mesh:

Year:  2010        PMID: 19718652     DOI: 10.1002/pst.389

Source DB:  PubMed          Journal:  Pharm Stat        ISSN: 1539-1604            Impact factor:   1.894


  7 in total

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Authors:  Annibale Cois; Rodney Ehrlich
Journal:  BMC Public Health       Date:  2013-09-22       Impact factor: 3.295

2.  Cognitive behavior therapy-based psychoeducational groups for adults with ADHD and their significant others (PEGASUS): an open clinical feasibility trial.

Authors:  T Hirvikoski; E Waaler; T Lindström; S Bölte; J Jokinen
Journal:  Atten Defic Hyperact Disord       Date:  2014-05-27

3.  Comparison of methods for handling covariate missingness in propensity score estimation with a binary exposure.

Authors:  Donna L Coffman; Jiangxiu Zhou; Xizhen Cai
Journal:  BMC Med Res Methodol       Date:  2020-06-26       Impact factor: 4.615

Review 4.  Propensity Score Methods in Health Technology Assessment: Principles, Extended Applications, and Recent Advances.

Authors:  M Sanni Ali; Daniel Prieto-Alhambra; Luciane Cruz Lopes; Dandara Ramos; Nivea Bispo; Maria Y Ichihara; Julia M Pescarini; Elizabeth Williamson; Rosemeire L Fiaccone; Mauricio L Barreto; Liam Smeeth
Journal:  Front Pharmacol       Date:  2019-09-18       Impact factor: 5.810

5.  Prospective safety surveillance of GH-deficient adults: comparison of GH-treated vs untreated patients.

Authors:  Mark L Hartman; Rong Xu; Brenda J Crowe; Leslie L Robison; Eva Marie Erfurth; David L Kleinberg; Alan G Zimmermann; Whitney W Woodmansee; Gordon B Cutler; John J Chipman; Shlomo Melmed
Journal:  J Clin Endocrinol Metab       Date:  2013-01-23       Impact factor: 5.958

6.  Associations of Hospital and Patient Characteristics with Fluid Resuscitation Volumes in Patients with Severe Sepsis: Post Hoc Analyses of Data from a Multicentre Randomised Clinical Trial.

Authors:  Peter Buhl Hjortrup; Nicolai Haase; Jørn Wetterslev; Anders Perner
Journal:  PLoS One       Date:  2016-05-19       Impact factor: 3.240

7.  The effect of a constraint on the maximum number of controls matched to each treated subject on the performance of full matching on the propensity score when estimating risk differences.

Authors:  Peter C Austin; Elizabeth A Stuart
Journal:  Stat Med       Date:  2020-10-07       Impact factor: 2.373

  7 in total

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