English

Decision-making with multiple correlated binary outcomes in clinical trials

Methodology 2023-08-14 v2

Abstract

Clinical trials often evaluate multiple outcome variables to form a comprehensive picture of the effects of a new treatment. The resulting multidimensional insight contributes to clinically relevant and efficient decision-making about treatment superiority. Common statistical procedures to make these superiority decisions with multiple outcomes have two important shortcomings however: 1) Outcome variables are often modeled individually, and consequently fail to consider the relation between outcomes; and 2) superiority is often defined as a relevant difference on a single, on any, or on all outcomes(s); and lacks a compensatory mechanism that allows large positive effects on one or multiple outcome(s) to outweigh small negative effects on other outcomes. To address these shortcomings, this paper proposes 1) a Bayesian model for the analysis of correlated binary outcomes based on the multivariate Bernoulli distribution; and 2) a flexible decision criterion with a compensatory mechanism that captures the relative importance of the outcomes. A simulation study demonstrates that efficient and unbiased decisions can be made while Type I error rates are properly controlled. The performance of the framework is illustrated for 1) fixed, group sequential, and adaptive designs; and 2) non-informative and informative prior distributions.

Keywords

Cite

@article{arxiv.1908.10158,
  title  = {Decision-making with multiple correlated binary outcomes in clinical trials},
  author = {X. M. Kavelaars and J. Mulder and M. C. Kaptein},
  journal= {arXiv preprint arXiv:1908.10158},
  year   = {2023}
}
R2 v1 2026-06-23T10:57:52.783Z