Abstract

A standard two‐arm randomised controlled trial usually compares an intervention to a control treatment with equal numbers of patients randomised to each treatment arm and only data from within the current trial are used to assess the treatment effect. Historical data are used when designing new trials and have recently been considered for use in the analysis when the required number of patients under a standard trial design cannot be achieved. Incorporating historical control data could lead to more efficient trials, reducing the number of controls required in the current study when the historical and current control data agree. However, when the data are inconsistent, there is potential for biased treatment effect estimates, inflated type I error and reduced power. We introduce two novel approaches for binary data which discount historical data based on the agreement with the current trial controls, an equivalence approach and an approach based on tail area probabilities. An adaptive design is used where the allocation ratio is adapted at the interim analysis, randomising fewer patients to control when there is agreement. The historical data are down‐weighted in the analysis using the power prior approach with a fixed power. We compare operating characteristics of the proposed design to historical data methods in the literature: the modified power prior; commensurate prior; and robust mixture prior. The equivalence probability weight approach is intuitive and the operating characteristics can be calculated exactly. Furthermore, the equivalence bounds can be chosen to control the maximum possible inflation in type I error.

Highlights

  • The commonly used two-arm parallel group randomised controlled trial compares an intervention to a control treatment

  • An adaptive design that replaces current controls with historical controls is utilised which allows the possibility of borrowing historical data when there is agreement with the current control data

  • We propose using the method described by Cook20 to calculate Pr(pt > pc) which allows the operating characteristics of the proposed design to be calculated exactly and quickly

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Summary

Introduction

The commonly used two-arm parallel group randomised controlled trial compares an intervention to a control treatment. Incorporating historical control data into the current study analysis could potentially lead to more efficient trials. Where historical data are used to replace current control data, there is the potential to reduce the sample size and the duration of the current study when the historical outcomes are consistent with those in the current control population. When these are inconsistent, there is the potential for biased treatment effect estimates, inflated type I error and reduced power

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