| Literature DB >> 29490655 |
Philip Pallmann1, Alun W Bedding2, Babak Choodari-Oskooei3, Munyaradzi Dimairo4, Laura Flight5, Lisa V Hampson6,7, Jane Holmes8, Adrian P Mander9, Lang'o Odondi8, Matthew R Sydes3, Sofía S Villar9, James M S Wason9,10, Christopher J Weir11, Graham M Wheeler9,12, Christina Yap13, Thomas Jaki6.
Abstract
Adaptive designs can make clinical trials more flexible by utilising results accumulating in the trial to modify the trial's course in accordance with pre-specified rules. Trials with an adaptive design are often more efficient, informative and ethical than trials with a traditional fixed design since they often make better use of resources such as time and money, and might require fewer participants. Adaptive designs can be applied across all phases of clinical research, from early-phase dose escalation to confirmatory trials. The pace of the uptake of adaptive designs in clinical research, however, has remained well behind that of the statistical literature introducing new methods and highlighting their potential advantages. We speculate that one factor contributing to this is that the full range of adaptations available to trial designs, as well as their goals, advantages and limitations, remains unfamiliar to many parts of the clinical community. Additionally, the term adaptive design has been misleadingly used as an all-encompassing label to refer to certain methods that could be deemed controversial or that have been inadequately implemented.We believe that even if the planning and analysis of a trial is undertaken by an expert statistician, it is essential that the investigators understand the implications of using an adaptive design, for example, what the practical challenges are, what can (and cannot) be inferred from the results of such a trial, and how to report and communicate the results. This tutorial paper provides guidance on key aspects of adaptive designs that are relevant to clinical triallists. We explain the basic rationale behind adaptive designs, clarify ambiguous terminology and summarise the utility and pitfalls of adaptive designs. We discuss practical aspects around funding, ethical approval, treatment supply and communication with stakeholders and trial participants. Our focus, however, is on the interpretation and reporting of results from adaptive design trials, which we consider vital for anyone involved in medical research. We emphasise the general principles of transparency and reproducibility and suggest how best to put them into practice.Entities:
Keywords: Adaptive design; Design modification; Flexible design; Interim analysis; Seamless design; Statistical methods
Mesh:
Year: 2018 PMID: 29490655 PMCID: PMC5830330 DOI: 10.1186/s12916-018-1017-7
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1Schematic of a traditional clinical trial design with fixed sample size, and an adaptive design with pre-specified review(s) and adaptation(s)
Overview of adaptive designs with examples of trials that employed these methods
| Design | Idea | Examples |
|---|---|---|
| Continual reassessment method | Model-based dose escalation to estimate the maximum tolerated dose | TRAFIC [ |
| Group-sequential | Include options to stop the trial early for safety, futility or efficacy | DEVELOP-UK [ |
| Sample size re-estimation | Adjust sample size to ensure the desired power | DEVELOP-UK [ |
| Multi-arm multi-stage | Explore multiple treatments, doses, durations or combinations with options to ‘drop losers’ or ‘select winners’ early | TAILoR [ |
| Population enrichment | Narrow down recruitment to patients more likely to benefit (most) from the treatment | Rizatriptan study [ |
| Biomarker-adaptive | Incorporate information from or adapt on biomarkers | FOCUS4 [ |
| Adaptive randomisation | Shift allocation ratio towards more promising or informative treatment(s) | DexFEM [ |
| Adaptive dose-ranging | Shift allocation ratio towards more promising or informative dose(s) | DILfrequency [ |
| Seamless phase I/II | Combine safety and activity assessment into one trial | MK-0572 [ |
| Seamless phase II/III | Combine selection and confirmatory stages into one trial | Case studies in [ |
Fig. 2Overview of the troxacitabine trial using a response-adaptive randomisation design. The probabilities shown are those at the time the patient on the x-axis was randomised. Coloured numbers indicate the arms to which the patients were randomised
Important statistical quantities for reporting a clinical trial, and how they may be affected by an adaptive design
| Statistical quantity | Fixed-design RCT property | Issue with adaptive design | Potential solution |
|---|---|---|---|
| Effect estimate | Unbiased: on average (across many trials) the effect estimate will have the same mean as the true value | Estimated treatment effect using naive methods can be biased, with an incorrect mean value | Use adjusted estimators that eliminate or reduce bias; use simulation to explore the extent of bias |
| Confidence interval | Correct coverage: 95% CIs will on average contain the true effect 95% of the time | CIs computed in the traditional way can have incorrect coverage | Use improved CIs that have correct or closer to correct coverage levels; use simulation to explore the actual coverage |
| Well-calibrated: the nominal significance level used is equal to the type I error rate actually achieved | Use |
CI confidence interval, RCT randomised controlled trial
Fig. 3Illustration of bias introduced by early stopping for futility. This is for 20 simulated two-arm trials with no true treatment effect. The trajectories of the test statistics (as a standardised measure of the difference between treatments) are subject to random fluctuation. Two trials (red) are stopped early because their test statistics are below a pre-defined futility boundary (blue cross) at the interim analysis. Allowing trials with random highs at the interim to continue but terminating trials with random lows early will lead to an upward bias of the (average) treatment effect