A dynamic power prior approach to non‐inferiority trials for normal means

Author:

Mariani Francesco1ORCID,De Santis Fulvio1,Gubbiotti Stefania1ORCID

Affiliation:

1. Dipartimento di Scienze Statistiche Sapienza University of Rome Rome Italy

Abstract

AbstractNon‐inferiority trials compare new experimental therapies to standard ones (active control). In these experiments, historical information on the control treatment is often available. This makes Bayesian methodology appealing since it allows a natural way to exploit information from past studies. In the present paper, we suggest the use of previous data for constructing the prior distribution of the control effect parameter. Specifically, we consider a dynamic power prior that possibly allows to discount the level of borrowing in the presence of heterogeneity between past and current control data. The discount parameter of the prior is based on the Hellinger distance between the posterior distributions of the control parameter based, respectively, on historical and current data. We develop the methodology for comparing normal means and we handle the unknown variance assumption using MCMC. We also provide a simulation study to analyze the proposed test in terms of frequentist size and power, as it is usually requested by regulatory agencies. Finally, we investigate comparisons with some existing methods and we illustrate an application to a real case study.

Publisher

Wiley

Subject

Pharmacology (medical),Pharmacology,Statistics and Probability

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