4.5 Article

Allowing for missing outcome data and incomplete uptake of randomised interventions, with application to an Internet-based alcohol trial

期刊

STATISTICS IN MEDICINE
卷 30, 期 27, 页码 3192-3207

出版社

WILEY
DOI: 10.1002/sim.4360

关键词

missing data; missing not at random; non-compliance; randomised trials

资金

  1. National Prevention Research Initiative
  2. British Heart Foundation
  3. Cancer Research UK
  4. Chief Scientist Office, Scottish Government Health Directorate
  5. Department of Health
  6. Diabetes UK
  7. Economic and Social Research Council
  8. Health & Social Care Research & Development Office for Northern Ireland
  9. Medical Research Council (MRC) [U.1052.00.006, U.1052.00.001]
  10. Welsh Assembly Government
  11. World Cancer Research Fund
  12. British Heart Foundation [RG/08/014/24067] Funding Source: researchfish
  13. Medical Research Council [MC_U105260792, MC_U105260558, MC_U122797163] Funding Source: researchfish
  14. MRC [MC_U105260792, MC_U122797163, MC_U105260558] Funding Source: UKRI

向作者/读者索取更多资源

Missing outcome data and incomplete uptake of randomised interventions are common problems, which complicate the analysis and interpretation of randomised controlled trials, and are rarely addressed well in practice. To promote the implementation of recent methodological developments, we describe sequences of randomisation-based analyses that can be used to explore both issues. We illustrate these in an Internet-based trial evaluating the use of a new interactive website for those seeking help to reduce their alcohol consumption, in which the primary outcome was available for less than half of the participants and uptake of the intervention was limited. For missing outcome data, we first employ data on intermediate outcomes and intervention use to make a missing at random assumption more plausible, with analyses based on general estimating equations, mixed models and multiple imputation. We then use data on the ease of obtaining outcome data and sensitivity analyses to explore departures from the missing at random assumption. For incomplete uptake of randomised interventions, we estimate structural mean models by using instrumental variable methods. In the alcohol trial, there is no evidence of benefit unless rather extreme assumptions are made about the missing data nor an important benefit in more extensive users of the intervention. These findings considerably aid the interpretation of the trial's results. More generally, the analyses proposed are applicable to many trials with missing outcome data or incomplete intervention uptake. To facilitate use by others, Stata code is provided for all methods. Copyright (C) 2011 JohnWiley & Sons, Ltd.

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