PLoS ONE (Jan 2014)

The continual reassessment method for multiple toxicity grades: a bayesian model selection approach.

  • Haitao Pan,
  • Cailin Zhu,
  • Feng Zhang,
  • Ying Yuan,
  • Shemin Zhang,
  • Wenhong Zhang,
  • Chanjuan Li,
  • Ling Wang,
  • Jielai Xia

DOI
https://doi.org/10.1371/journal.pone.0098147
Journal volume & issue
Vol. 9, no. 5
p. e98147

Abstract

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Grade information has been considered in Yuan et al. (2007) wherein they proposed a Quasi-CRM method to incorporate the grade toxicity information in phase I trials. A potential problem with the Quasi-CRM model is that the choice of skeleton may dramatically vary the performance of the CRM model, which results in similar consequences for the Quasi-CRM model. In this paper, we propose a new model by utilizing bayesian model selection approach--Robust Quasi-CRM model--to tackle the above-mentioned pitfall with the Quasi-CRM model. The Robust Quasi-CRM model literally inherits the BMA-CRM model proposed by Yin and Yuan (2009) to consider a parallel of skeletons for Quasi-CRM. The superior performance of Robust Quasi-CRM model was demonstrated by extensive simulation studies. We conclude that the proposed method can be freely used in real practice.