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Improving precision and power in randomized trials with a two-stage study design: Stratification using clustering method.

Xuan YeNelson LuYunling Xu
Published in: Pharmaceutical statistics (2022)
In a randomized controlled trial (RCT), it is possible to improve precision and power and reduce sample size by appropriately adjusting for baseline covariates. There are multiple statistical methods to adjust for prognostic baseline covariates, such as an ANCOVA method. In this paper, we propose a clustering-based stratification method for adjusting for the prognostic baseline covariates. Clusters (strata) are formed only based on prognostic baseline covariates, not outcome data nor treatment assignment. Therefore, the clustering procedure can be completed prior to the availability of outcome data. The treatment effect is estimated in each cluster, and the overall treatment effect is derived by combining all cluster-specific treatment effect estimates. The proposed implementation of the procedure is described. Simulations studies and an example are presented.
Keyphrases
  • machine learning
  • big data
  • artificial intelligence
  • primary care
  • healthcare
  • minimally invasive
  • combination therapy
  • rna seq
  • molecular dynamics
  • data analysis