Abstract

BackgroundWhen designing studies it is common to search the literature to investigate variability estimates to use in sample size calculations. Proprietary data of previously designed trials in a particular indication are also used to obtain estimates of variability. Estimates of treatment effects are typically obtained from randomised controlled clinical trials (RCTs). Based on the observed estimates of treatment effect, variability and the minimum clinical relevant difference to detect, the sample size for a subsequent trial is estimated. However, data from real world evidence (RWE) studies, such as observational studies and other interventional studies in patients in routine clinical practice, are not widely used in a systematic manner when designing studies. In this paper, we propose a framework for inclusion of RWE in planning of a clinical development programme.MethodsIn our proposed approach, all evidence, from both RCTs and RWE (i.e. from studies in routine clinical practice), available at the time of designing of a new clinical trial is combined in a Bayesian network meta-analysis (NMA). The results can be used to inform the design of the next clinical trial in the programme. The NMA was performed at key milestones, such as at the end of the phase II trial and prior to the design of key phase III studies. To illustrate the methods, we designed an alternative clinical development programme in multiple sclerosis using RWE through clinical trial simulations.ResultsInclusion of RWE in the NMA and the resulting trial simulations demonstrated that 284 patients per arm were needed to achieve 90% power to detect effects of predetermined size in the TRANSFORMS study. For the FREEDOMS and FREEDOMS II clinical trials, 189 patients per arm were required. Overall there was a reduction in sample size of at least 40% across the three phase III studies, which translated to a time savings of at least 6 months for the undertaking of the fingolimod phase III programme.ConclusionThe use of RWE resulted in a reduced sample size of the pivotal phase III studies, which led to substantial time savings compared to the approach of sample size calculations without RWE.

Highlights

  • When designing studies it is common to search the literature to investigate variability estimates to use in sample size calculations

  • Results of network meta-analysis (NMA) Including real world evidence (RWE) studies increased the evidence base, and the number of treatment comparisons not considered within the Randomised controlled clinical trial (RCT)

  • The treatment effects used to simulate the power of an alternative TRANSFORMS trial were obtained from the NMA (RCT and RWE) that included the phase II trial

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Summary

Introduction

When designing studies it is common to search the literature to investigate variability estimates to use in sample size calculations. Based on the observed estimates of treatment effect, variability and the minimum clinical relevant difference to detect, the sample size for a subsequent trial is estimated. Reducing the need for, or at least the size of, future studies has a significant impact on the cost of drug development, and potentially this can be achieved if, for example, the synthesis of available evidence results in more precise estimates of effectiveness. RWE has not been widely included in drug development programmes, for example, to inform future (phase III) studies. There have been a few published examples of the use of meta-analysis to inform sample size [6] and the design of future trials [7,8,9]

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