AI Article Synopsis

  • Clinical trials often compare different treatments to see which is more effective, particularly using ordered categorical responses.
  • This study focuses on enhancing the Wilcoxon-Mann-Whitney test for comparing more than two treatments, but notes limitations when the proportional odds assumption isn't valid.
  • The authors propose a new strategy using a latent normal model, demonstrating its effectiveness in controlling type I error rates and increased power through simulation studies.

Article Abstract

Clinical trials frequently involve pairwise comparisons of different treatments to evaluate their relative efficacy. In this study, we examine methods for conducting pairwise tests of treatments with ordered categorical responses. A modified version of the Wilcoxon-Mann-Whitney test based on a logistic regression model assuming proportional odds is a popular choice for comparing two treatments. This paper discusses the extension of this test to pairwise comparisons involving more than two treatments. However, when the proportional odds assumption is not valid, the Wilcoxon-Mann-Whitney-type test procedure cannot control the overall type I error rate at the prespecified level of significance. We therefore propose a better strategy in which a latent normal model is employed. We presented a simulated comparative study of power and the overall type I error rate to illustrate the superiority of the latent normal model. Examples are also given for illustrative purposes.

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Source
http://dx.doi.org/10.1002/sim.5751DOI Listing

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