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Predictive modeling of U.S. health care spending in late life.

Liran EinavAmy FinkelsteinSendhil MullainathanZiad Obermeyer
Published in: Science (New York, N.Y.) (2018)
That one-quarter of Medicare spending in the United States occurs in the last year of life is commonly interpreted as waste. But this interpretation presumes knowledge of who will die and when. Here we analyze how spending is distributed by predicted mortality, based on a machine-learning model of annual mortality risk built using Medicare claims. Death is highly unpredictable. Less than 5% of spending is accounted for by individuals with predicted mortality above 50%. The simple fact that we spend more on the sick-both on those who recover and those who die-accounts for 30 to 50% of the concentration of spending on the dead. Our results suggest that spending on the ex post dead does not necessarily mean that we spend on the ex ante "hopeless."
Keyphrases
  • healthcare
  • machine learning
  • cardiovascular events
  • type diabetes
  • cardiovascular disease
  • coronary artery disease
  • heavy metals
  • risk assessment
  • health insurance
  • health information
  • life cycle