A Bayesian adaptive design for dual-agent phase I-II oncology trials integrating efficacy data across stages

Biom J. 2023 Oct;65(7):e2200288. doi: 10.1002/bimj.202200288. Epub 2023 May 18.

Abstract

Combination of several anticancer treatments has typically been presumed to have enhanced drug activity. Motivated by a real clinical trial, this paper considers phase I-II dose finding designs for dual-agent combinations, where one main objective is to characterize both the toxicity and efficacy profiles. We propose a two-stage Bayesian adaptive design that accommodates a change of patient population in-between. In stage I, we estimate a maximum tolerated dose combination using the escalation with overdose control (EWOC) principle. This is followed by a stage II, conducted in a new yet relevant patient population, to find the most efficacious dose combination. We implement a robust Bayesian hierarchical random-effects model to allow sharing of information on the efficacy across stages, assuming that the related parameters are either exchangeable or nonexchangeable. Under the assumption of exchangeability, a random-effects distribution is specified for the main effects parameters to capture uncertainty about the between-stage differences. The inclusion of nonexchangeability assumption further enables that the stage-specific efficacy parameters have their own priors. The proposed methodology is assessed with an extensive simulation study. Our results suggest a general improvement of the operating characteristics for the efficacy assessment, under a conservative assumption about the exchangeability of the parameters a priori.

Keywords: drug combination; information borrowing; meta-analytic-combined; phase I-II; seamless designs.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Bayes Theorem
  • Clinical Trials, Phase I as Topic
  • Clinical Trials, Phase II as Topic
  • Computer Simulation
  • Dose-Response Relationship, Drug
  • Humans
  • Medical Oncology
  • Neoplasms*
  • Research Design