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Meta-STEPP with random effects.

Xin Victoria WangBernard ColeMarco BonettiRichard D Gelber
Published in: Research synthesis methods (2018)
We recently developed a method called Meta-STEPP based on the fixed-effects meta-analytic approach to explore treatment effect heterogeneity across a continuous covariate for individual time-to-event data arising from multiple clinical trials. Meta-STEPP forms overlapping subpopulation windows (meta-windows) along a continuous covariate of interest, estimates the overall treatment effect in each meta-window using standard fixed-effects method, plots them against the continuous covariate, and tests for treatment-effect heterogeneity across the range of covariate values. Here, we extend this method using random-effects methods and find it to be more conservative than the fixed-effects method. Both the random- and fixed-effects Meta-STEPP are implemented in R.
Keyphrases
  • clinical trial
  • single cell
  • machine learning
  • electronic health record
  • deep learning
  • big data
  • artificial intelligence
  • phase iii
  • neural network