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A hierarchical testing approach for detecting safety signals in clinical trials.

Xianming M TanBingshu E ChenJianping SunTejendra PatelJoseph G Ibrahim
Published in: Statistics in medicine (2020)
Detecting safety signals in clinical trial safety data is known to be challenging due to high dimensionality, rare occurrence, weak signal, and complex dependence. We propose a new hierarchical testing approach for analyzing safety data from a typical randomized clinical trial. This approach accounts for the hierarchical structure of adverse events (AEs), that is, AEs are categorized by system organ class (SOC). Our approach contains two steps: the first step tests, for each SOC, whether any AEs within this SOC are differently distributed between treatment arms; and the second step identifies signal AEs from SOCs passing the first step tests. We show the superiority, in terms of power of detecting safety signals given controlled false discovery rate, of the new approach comparing with currently available approaches through simulation studies. We also demonstrate this approach with two real data examples.
Keyphrases
  • clinical trial
  • electronic health record
  • big data
  • risk assessment
  • randomized controlled trial
  • small molecule
  • gene expression
  • genome wide
  • dna methylation
  • machine learning
  • study protocol
  • phase ii