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Machine learning for predicting mortality in adult critically ill patients with Sepsis: A systematic review.

Nasrin NikravangolsefidSwetha ReddyHong Hieu TruongMariam CharkvianiJacob NinanLarry J ProkopSupawadee SuppadungsukWaryaam SinghKianoush B KashaniJuan Pablo Domecq Garces
Published in: Journal of critical care (2024)
ML models demonstrate a modest improvement in predicting sepsis-associated mortality. The certainty of these findings remains low due to the high risk of bias and significant heterogeneity. Studies should include comprehensive methodological details on calibration and hyperparameter selection, adopt a standardized definition of sepsis, and conduct multicenter prospective designs along with external validations.
Keyphrases
  • septic shock
  • acute kidney injury
  • intensive care unit
  • machine learning
  • cardiovascular events
  • risk factors
  • type diabetes
  • artificial intelligence
  • clinical trial
  • cardiovascular disease