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Personalized survival predictions via Trees of Predictors: An application to cardiac transplantation.

Jinsung YoonWilliam R ZameAmitava BanerjeeMartin CadeirasAhmed M AlaaMihaela van der Schaar
Published in: PloS one (2018)
We show that, in comparison with existing clinical risk-scoring methods and other machine learning methods, ToPs significantly improves survival predictions both post- and pre-cardiac transplantation. ToPs provides a more accurate, personalized approach to survival prediction that can benefit patients, clinicians, and policymakers in making clinical decisions and setting clinical policy. Because survival prediction is widely used in clinical decision-making across diseases and clinical specialties, the implications of our methods are far-reaching.
Keyphrases
  • machine learning
  • healthcare
  • decision making
  • public health
  • left ventricular
  • end stage renal disease
  • chronic kidney disease
  • mental health
  • newly diagnosed
  • free survival
  • artificial intelligence
  • bone marrow