Intention-to-treat analysis when only a baseline value is available

JWR Twisk, JJM Rijnhart, T Hoekstra, NA Schuster, Marieke ter Wee, MW Heymans, Judith JM Rijnhart, Martijn W. Heymans

Research output: Contribution to journalArticleAcademicpeer-review

21 Citations (Scopus)

Abstract

Objectives: How to perform an intention to treat (ITT) analysis when a patient has a baseline value but no follow-up measurements is problematic. The purpose of this study was to compare different methods that deal with this problem, i.e. no imputation (standard and alternative mixed model analysis), single imputation (i.e. baseline value carried forward), and multiple imputation (selective and non-selective). Study design and setting: We used a simulation study with different scenarios regarding 1) the association between missingness and the baseline value, 2) whether the patients did or did not receive the treatment, and 3) the percentage of missing data, and two real life data sets. Results: Bias and coverage were comparable between the two mixed model analyses and multiple imputation in most situations including the real life data examples. Only in the situation when the patients in the treatment group were simulated not to have received the treatment, selective imputation using this information outperformed all other methods. Conclusions: In most situations a standard mixed model analysis without imputation is appropriate as ITT analysis. However, when patients with missing follow-up data allocated to the treatment group did not received treatment, it is advised to use selective imputation, using this information, although the results should be interpreted with caution.

Original languageEnglish
Article number100684
Pages (from-to)1-7
Number of pages7
JournalContemporary Clinical Trials Communications
Volume20
Early online date26 Nov 2020
DOIs
Publication statusPublished - Dec 2020

Keywords

  • Intention to treat analysis
  • Mixed model analysis
  • Multiple imputation
  • Randomised controlled trial
  • Selective imputation
  • Single imputation

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