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Multiple imputation for harmonizing longitudinal non-commensurate measures in individual participant data meta-analysis.

Publication ,  Journal Article
Siddique, J; Reiter, JP; Brincks, A; Gibbons, RD; Crespi, CM; Brown, CH
Published in: Statistics in Medicine
November 2015

There are many advantages to individual participant data meta-analysis for combining data from multiple studies. These advantages include greater power to detect effects, increased sample heterogeneity, and the ability to perform more sophisticated analyses than meta-analyses that rely on published results. However, a fundamental challenge is that it is unlikely that variables of interest are measured the same way in all of the studies to be combined. We propose that this situation can be viewed as a missing data problem in which some outcomes are entirely missing within some trials and use multiple imputation to fill in missing measurements. We apply our method to five longitudinal adolescent depression trials where four studies used one depression measure and the fifth study used a different depression measure. None of the five studies contained both depression measures. We describe a multiple imputation approach for filling in missing depression measures that makes use of external calibration studies in which both depression measures were used. We discuss some practical issues in developing the imputation model including taking into account treatment group and study. We present diagnostics for checking the fit of the imputation model and investigate whether external information is appropriately incorporated into the imputed values.

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Published In

Statistics in Medicine

DOI

EISSN

1097-0258

ISSN

0277-6715

Publication Date

November 2015

Volume

34

Issue

26

Start / End Page

3399 / 3414

Related Subject Headings

  • Treatment Outcome
  • Statistics & Probability
  • Research Design
  • Randomized Controlled Trials as Topic
  • Psychology, Adolescent
  • Models, Statistical
  • Meta-Analysis as Topic
  • Male
  • Longitudinal Studies
  • Humans
 

Citation

APA
Chicago
ICMJE
MLA
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Siddique, J., Reiter, J. P., Brincks, A., Gibbons, R. D., Crespi, C. M., & Brown, C. H. (2015). Multiple imputation for harmonizing longitudinal non-commensurate measures in individual participant data meta-analysis. Statistics in Medicine, 34(26), 3399–3414. https://doi.org/10.1002/sim.6562
Siddique, Juned, Jerome P. Reiter, Ahnalee Brincks, Robert D. Gibbons, Catherine M. Crespi, and C Hendricks Brown. “Multiple imputation for harmonizing longitudinal non-commensurate measures in individual participant data meta-analysis.Statistics in Medicine 34, no. 26 (November 2015): 3399–3414. https://doi.org/10.1002/sim.6562.
Siddique J, Reiter JP, Brincks A, Gibbons RD, Crespi CM, Brown CH. Multiple imputation for harmonizing longitudinal non-commensurate measures in individual participant data meta-analysis. Statistics in Medicine. 2015 Nov;34(26):3399–414.
Siddique, Juned, et al. “Multiple imputation for harmonizing longitudinal non-commensurate measures in individual participant data meta-analysis.Statistics in Medicine, vol. 34, no. 26, Nov. 2015, pp. 3399–414. Epmc, doi:10.1002/sim.6562.
Siddique J, Reiter JP, Brincks A, Gibbons RD, Crespi CM, Brown CH. Multiple imputation for harmonizing longitudinal non-commensurate measures in individual participant data meta-analysis. Statistics in Medicine. 2015 Nov;34(26):3399–3414.
Journal cover image

Published In

Statistics in Medicine

DOI

EISSN

1097-0258

ISSN

0277-6715

Publication Date

November 2015

Volume

34

Issue

26

Start / End Page

3399 / 3414

Related Subject Headings

  • Treatment Outcome
  • Statistics & Probability
  • Research Design
  • Randomized Controlled Trials as Topic
  • Psychology, Adolescent
  • Models, Statistical
  • Meta-Analysis as Topic
  • Male
  • Longitudinal Studies
  • Humans