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Machine Learning Methods to Estimate Individualized Treatment Effects for Use in Health Technology Assessment.

Yingying ZhangNoemi KreifVijay Singh GcAndrea Manca
Published in: Medical decision making : an international journal of the Society for Medical Decision Making (2024)
Estimating individualized treatment effects (ITEs) using observational data and machine learning (ML) can support personalized treatment advice and help deliver more customized information on the effectiveness and cost-effectiveness of health technologies.ML methods for ITE estimation are mostly designed for handling confounding at baseline but not time-varying or unobserved confounding. The few models that account for time-varying confounding are designed for continuous or binary outcomes, not time-to-event outcomes.Not all ML methods for estimating ITEs can quantify the uncertainty of their predictions.Future work on developing ML that addresses the concerns summarized in this review is needed before these methods can be widely used in clinical and health technology assessment-like decision making.
Keyphrases
  • machine learning
  • healthcare
  • public health
  • mental health
  • health information
  • decision making
  • type diabetes
  • artificial intelligence
  • climate change
  • weight loss