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Application of machine learning models based on decision trees in classifying the factors affecting mortality of COVID-19 patients in Hamadan, Iran.

Samad MoslehiNiloofar RabieiAli Reza SoltanianMojgan Mamani
Published in: BMC medical informatics and decision making (2022)
Finding a highly accurate and qualified model for interpreting the classification of a response that is considered clinically consequential is critical at all stages, including treatment and immediate decision making. In this study, the CART with its high accuracy for diagnosing and classifying mortality of COVID-19 patients as well as prioritizing important demographic, clinical, and laboratory findings in an interpretable format, risk factors for prognosis of COVID-19 patients mortality identify and enable immediate and appropriate decisions for health professionals and physicians.
Keyphrases
  • machine learning
  • sars cov
  • cardiovascular events
  • risk factors
  • primary care
  • type diabetes
  • big data
  • mass spectrometry