A Bayesian platform trial design with hybrid control based on multisource exchangeability modelling.
Wei WeiOndrej BlahaDenise A EssermanDaniel ZeltermanMichael J KaneRachael LiuJianchang LinPublished in: Statistics in medicine (2024)
Enrolling patients to the standard of care (SOC) arm in randomized clinical trials, especially for rare diseases, can be very challenging due to the lack of resources, restricted patient population availability, and ethical considerations. As the therapeutic effect for the SOC is often well documented in historical trials, we propose a Bayesian platform trial design with hybrid control based on the multisource exchangeability modelling (MEM) framework to harness historical control data. The MEM approach provides a computationally efficient method to formally evaluate the exchangeability of study outcomes between different data sources and allows us to make better informed data borrowing decisions based on the exchangeability between historical and concurrent data. We conduct extensive simulation studies to evaluate the proposed hybrid design. We demonstrate the proposed design leads to significant sample size reduction for the internal control arm and borrows more information compared to competing Bayesian approaches when historical and internal data are compatible.
Keyphrases
- electronic health record
- big data
- end stage renal disease
- clinical trial
- chronic kidney disease
- study protocol
- type diabetes
- high throughput
- ejection fraction
- newly diagnosed
- machine learning
- phase iii
- prognostic factors
- phase ii
- metabolic syndrome
- artificial intelligence
- case report
- chronic pain
- social media
- single cell
- decision making