Machine Learning for Treatment Assignment: Improving Individualized Risk Attribution.

Journal: AMIA ... Annual Symposium proceedings. AMIA Symposium
Published Date:

Abstract

Clinical studies model the average treatment effect (ATE), but apply this population-level effect to future individuals. Due to recent developments of machine learning algorithms with useful statistical guarantees, we argue instead for modeling the individualized treatment effect (ITE), which has better applicability to new patients. We compare ATE-estimation using randomized and observational analysis methods against ITE-estimation using machine learning, and describe how the ITE theoretically generalizes to new population distributions, whereas the ATE may not. On a synthetic data set of statin use and myocardial infarction (MI), we show that a learned ITE model improves true ITE estimation and outperforms the ATE. We additionally argue that ITE models should be learned with a consistent, nonparametric algorithm from unweighted examples and show experiments in favor of our argument using our synthetic data model and a real data set of D-penicillamine use for primary biliary cirrhosis.

Authors

  • Jeremy Weiss
    University of Wisconsin, Madison, WI.
  • Finn Kuusisto
    Morgridge Institute for Research, Regenerative Biology, Madison, WI, USA.
  • Kendrick Boyd
    University of Wisconsin, Madison, WI.
  • Jie Liu
    School of Bioscience and Bioengineering, South China University of Technology, Guangzhou, China.
  • David Page
    Duke University, Department of Biostatistics and Bioinformatics, Durham, NC, USA.