Abstract

BackgroundMost confirmatory randomised controlled clinical trials (RCTs) are designed with specified power, usually 80% or 90%, for a hypothesis test conducted at a given significance level, usually 2.5% for a one-sided test. Approval of the experimental treatment by regulatory agencies is then based on the result of such a significance test with other information to balance the risk of adverse events against the benefit of the treatment to future patients. In the setting of a rare disease, recruiting sufficient patients to achieve conventional error rates for clinically reasonable effect sizes may be infeasible, suggesting that the decision-making process should reflect the size of the target population.MethodsWe considered the use of a decision-theoretic value of information (VOI) method to obtain the optimal sample size and significance level for confirmatory RCTs in a range of settings. We assume the decision maker represents society. For simplicity we assume the primary endpoint to be normally distributed with unknown mean following some normal prior distribution representing information on the anticipated effectiveness of the therapy available before the trial. The method is illustrated by an application in an RCT in haemophilia A. We explicitly specify the utility in terms of improvement in primary outcome and compare this with the costs of treating patients, both financial and in terms of potential harm, during the trial and in the future.ResultsThe optimal sample size for the clinical trial decreases as the size of the population decreases. For non-zero cost of treating future patients, either monetary or in terms of potential harmful effects, stronger evidence is required for approval as the population size increases, though this is not the case if the costs of treating future patients are ignored.ConclusionsDecision-theoretic VOI methods offer a flexible approach with both type I error rate and power (or equivalently trial sample size) depending on the size of the future population for whom the treatment under investigation is intended. This might be particularly suitable for small populations when there is considerable information about the patient population.

Highlights

  • Most confirmatory randomised controlled clinical trials (RCTs) are designed with specified power, usually 80% or 90%, for a hypothesis test conducted at a given significance level, usually 2.5% for a one-sided test

  • The methodology of decision theory is the foundation of the value of information (VOI) method presented in the health economics literature

  • Decision-theoretic VOI analysis provides an alternative to conventional power calculations for the determination of the sample size for a clinical trial

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Summary

Introduction

Most confirmatory randomised controlled clinical trials (RCTs) are designed with specified power, usually 80% or 90%, for a hypothesis test conducted at a given significance level, usually 2.5% for a one-sided test. Prior to approval a drug typically goes through various phases of clinical development, beginning with assessing pharmacology in humans (phase I), followed by exploration of therapeutic efficacy (phase II) and confirmation of the effectiveness (phase III). This is not a necessary ordering, for example, prior to presenting overall clinical development, results and issues of the drug’s efficacy and safety (this list is long) to regulatory agencies, further investigation of the effect on human pharmacology may be conducted. Based on the submitted information, the regulatory authorities approve the product that has demonstrated safety and effectiveness for the intended population. The difference is usually attributable to the small population where it is infeasible or impossible to recruit many patients for trials

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