Using phase II data for the analysis of phase III studies: an application in rare diseases
Simon Wandel, Beat Neuenschwander, Tim Friede, Christian R\"over

TL;DR
This paper proposes a Bayesian meta-analytic approach to incorporate phase II data into phase III study designs, improving decision-making in rare disease drug development, demonstrated through a herpetic keratitis case study.
Contribution
It introduces a Bayesian method for using phase II data to inform phase III trials, enhancing efficiency and decision accuracy in orphan disease research.
Findings
Bayesian approach effectively incorporates phase II data.
Interim analysis based on phase II data supports faster approval.
Design outperforms traditional methods ignoring phase II data.
Abstract
Clinical research and drug development in orphan diseases is challenging, since large-scale randomized studies are difficult to conduct. Formally synthesizing the evidence is therefore of great value, yet this is rarely done in the drug approval process. Phase III designs that make better use of phase II data can facilitate drug development in orphan diseases. A Bayesian meta-analytic approach is used to inform the phase III study with phase II data. It is particularly attractive, since uncertainty of between-trial heterogeneity can be dealt with probabilistically, which is critical if the number of studies is small. Furthermore, it allows quantifying and discounting the phase II data through the predictive distribution relevant for phase III. A phase III design is proposed which uses the phase II data and considers approval based on a phase III interim analysis. The design is…
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