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Bayesian design of clinical trials using joint models for recurrent and terminating events.

Jiawei XuMatthew Austin PsiodaJoseph G Ibrahim
Published in: Biostatistics (Oxford, England) (2022)
Joint models for recurrent event and terminating event data are increasingly used for the analysis of clinical trials. However, few methods have been proposed for designing clinical trials using these models. In this article, we develop a Bayesian clinical trial design methodology focused on evaluating the effect of an investigational product (IP) on both recurrent event and terminating event processes considered as multiple primary endpoints, using a multifrailty joint model. Dependence between the recurrent and terminating event processes is accounted for using a shared frailty. Inferences for the multiple primary outcomes are based on posterior model probabilities corresponding to mutually exclusive hypotheses regarding the benefit of IP with respect to the recurrent and terminating event processes. We propose an approach for sample size determination to ensure the trial design has a high power and a well-controlled type I error rate, with both operating characteristics defined from a Bayesian perspective. We also consider a generalization of the proposed parametric model that uses a nonparametric mixture of Dirichlet processes to model the frailty distributions and compare its performance to the proposed approach. We demonstrate the methodology by designing a colorectal cancer clinical trial with a goal of demonstrating that the IP causes a favorable effect on at least one of the two outcomes but no harm on either.
Keyphrases
  • clinical trial
  • phase ii
  • phase iii
  • open label
  • study protocol
  • double blind
  • randomized controlled trial
  • metabolic syndrome
  • weight loss
  • insulin resistance
  • deep learning
  • big data