English

Beyond the Two-Trials Rule

Methodology 2023-11-10 v2

Abstract

The two-trials rule for drug approval requires "at least two adequate and well-controlled studies, each convincing on its own, to establish effectiveness". This is usually implemented by requiring two significant pivotal trials and is the standard regulatory requirement to provide evidence for a new drug's efficacy. However, there is need to develop suitable alternatives to this rule for a number of reasons, including the possible availability of data from more than two trials. I consider the case of up to 3 studies and stress the importance to control the partial Type-I error rate, where only some studies have a true null effect, while maintaining the overall Type-I error rate of the two-trials rule, where all studies have a null effect. Some less-known pp-value combination methods are useful to achieve this: Pearson's method, Edgington's method and the recently proposed harmonic mean χ2\chi^2-test. I study their properties and discuss how they can be extended to a sequential assessment of success while still ensuring overall Type-I error control. I compare the different methods in terms of partial Type-I error rate, project power and the expected number of studies required. Edgington's method is eventually recommended as it is easy to implement and communicate, has only moderate partial Type-I error rate inflation but substantially increased project power.

Keywords

Cite

@article{arxiv.2307.04548,
  title  = {Beyond the Two-Trials Rule},
  author = {Leonhard Held},
  journal= {arXiv preprint arXiv:2307.04548},
  year   = {2023}
}
R2 v1 2026-06-28T11:25:57.262Z