A framework for extending trial design to facilitate missing data sensitivity analyses.

Alexina J Mason, Richard D Grieve, Alvin Richards-Belle, Paul R Mouncey, David A Harrison, James R Carpenter
Author Information
  1. Alexina J Mason: Department of Health Services Research and Policy, London School of Hygiene and Tropical Medicine, 15-17 Tavistock Place, London, WC1H 9SH, UK. alexina.mason@lshtm.ac.uk. ORCID
  2. Richard D Grieve: Department of Health Services Research and Policy, London School of Hygiene and Tropical Medicine, 15-17 Tavistock Place, London, WC1H 9SH, UK.
  3. Alvin Richards-Belle: Clinical Trials Unit, Intensive Care National Audit & Research Centre (ICNARC), London, UK.
  4. Paul R Mouncey: Clinical Trials Unit, Intensive Care National Audit & Research Centre (ICNARC), London, UK.
  5. David A Harrison: Clinical Trials Unit, Intensive Care National Audit & Research Centre (ICNARC), London, UK.
  6. James R Carpenter: Department of Medical Statistics, London School of Hygiene and Tropical Medicine, Keppel Street, London, WC1E 7HT, UK.

Abstract

BACKGROUND: Missing data are an inevitable challenge in Randomised Controlled Trials (RCTs), particularly those with patient Reported Outcome Measures. Methodological guidance suggests that to avoid incorrect conclusions, studies should undertake sensitivity analyses which recognise that data may be 'missing not at random' (MNAR). A recommended approach is to elicit expert opinion about the likely outcome differences for those with missing versus observed data. However, few published trials plan and undertake these elicitation exercises, and so lack the external information required for these sensitivity analyses. The aim of this paper is to provide a framework that anticipates and allows for MNAR data in the design and analysis of clinical trials.
METHODS: We developed a framework for performing and using expert elicitation to frame sensitivity analysis in RCTs with missing outcome data. The framework includes the following steps: first defining the scope of the elicitation exercise, second developing the elicitation tool, third eliciting expert opinion about the missing outcomes, fourth evaluating the elicitation results, and fifth analysing the trial data. We provide guidance on key practical challenges that arise when adopting this approach in trials: the criteria for identifying relevant experts, the outcome scale for presenting data to experts, the appropriate representation of expert opinion, and the evaluation of the elicitation results.The framework was developed within the POPPI trial, which investigated whether a preventive, complex psychological intervention, commenced early in ICU, would reduce the development of patient-reported post-traumatic stress disorder symptom severity, and improve health-related quality of life. We illustrate the key aspects of the proposed framework using the POPPI trial.
RESULTS: For the POPPI trial, 113 experts were identified with potentially suitable knowledge and asked to participate in the elicitation exercise. The 113 experts provided 59 usable elicitation questionnaires. The sensitivity analysis found that the results from the primary analysis were robust to alternative MNAR mechanisms.
CONCLUSIONS: Future studies can adopt this framework to embed expert elicitation within the design of clinical trials. This will provide the information required for MNAR sensitivity analyses that examine the robustness of the trial conclusions to alternative, but realistic assumptions about the missing data.

Keywords

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Grants

  1. MC_UU_12023/21/Medical Research Council
  2. MC_UU_12023/29/Medical Research Council
  3. MC_ UU_ 12023/21/Medical Research Council
  4. MC_ UU_ 12023/29/Medical Research Council

MeSH Term

Data Analysis
Humans
Quality of Life
Surveys and Questionnaires

Word Cloud

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