| Literature DB >> 32183708 |
Alexina J Mason1, Richard D Grieve2, Alvin Richards-Belle3, Paul R Mouncey3, David A Harrison3, James R Carpenter4,5.
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.Entities:
Keywords: Bayesian analysis; Clinical trials; Expert elicitation; Missing data; Pattern-mixture models; Sensitivity analysis
Mesh:
Year: 2020 PMID: 32183708 PMCID: PMC7076973 DOI: 10.1186/s12874-020-00930-2
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1Expert elicitation framework. Elements shaded grey relate to the four challenges discussed in the introduction
Fig. 2Screen shots showing the outcome scales from the two POPPI Elicitation Tools. A outcome scale for PSS-SR (PTSD symptom severity) scores. B outcome scale for EQ-5D-5L (HrQoL) scores
Summary of the characteristics of the experts who provided ‘usable’ responses
| PSS-SR | HrQoL | Total | ||||
|---|---|---|---|---|---|---|
| Number of ‘usable’ responses | 29 | 30 | 59 | |||
| of which, number of ‘high confidence’ | 15 | 8 | 23 | |||
| Job: | ||||||
| Nurse | 8 | (28%) | 5 | (17%) | 13 | (22%) |
| Medical Doctor | 16 | (55%) | 18 | (62%) | 34 | (59%) |
| Other | 5 | (17%) | 6 | (21%) | 11 | (19%) |
| Years in current role: | ||||||
| 1 year | 1 | (3%) | 0 | (0%) | 1 | (2%) |
| 2 - 3 years | 1 | (3%) | 1 | (3%) | 2 | (3%) |
| 4 - 6 years | 3 | (10%) | 1 | (3%) | 4 | (7%) |
| 7 - 10 years | 4 | (14%) | 4 | (14%) | 8 | (14%) |
| more than 10 years | 20 | (69%) | 23 | (79%) | 43 | (74%) |
| POPPI site? | ||||||
| Yes (trial or feasibility) | 8 | (30%) | 8 | (29%) | 16 | (29%) |
| No | 19 | (70%) | 20 | (71%) | 39 | (71%) |
aExcludes 1 HrQoL expert who did not respond to this question
bExcludes 1 HrQoL expert who did not respond to this question, and 2 PSS-SR experts and 1 HrQoL expert who were unsure
cPercentage of column total
Fig. 3Individual elicited prior distributions for PSS-SR and HrQoL for patients receiving the POPPI intervention. Type A patients are female, younger and anxious; type B patients are male, older and anxious; type C patients are male, younger and not anxious. Thin grey lines = experts providing ‘usable but not with high confidence’ responses; thin black lines = experts providing ‘usable with high confidence’ responses. a PSS: Type A patients. b HrQoL: Type A patients. c PSS: Type B patients. d HrQoL: Type B patients. e PSS: Type C patients. f HrQoL: Type C patients
Fig. 4Treatment effect estimates at six months post-recruitment according to alternative missing not at random assumptions. The missing not at random assumptions are compared to the primary and complete case analyses. Each shaded rectangular strip shows the full posterior distribution. The darkness at a point is proportional to the probability density, such that the strip is darkest at the maximum density and fades into the background at the minimum density. The posterior mean and 95% credible interval (CrI) are marked. * interaction between treatment group and time period. For PSS-SR, negative differences favour the POPPI intervention, and for HrQoL positive differences favour the POPPI intervention. MAR = Missing At Random; MNAR = Missing Not At Random. A Primary treatment effect estimate. B Treatment effect on health-related quality of life score