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Comparison of machine learning techniques to predict all-cause mortality using fitness data: the Henry ford exercIse testing (FIT) project.

Sherif SakrRadwa ElshawiAmjad M AhmedWaqas T QureshiClinton A BrawnerSteven J KeteyianMichael J BlahaMouaz H Al Mallah
Published in: BMC medical informatics and decision making (2017)
The results show that various ML techniques can significantly vary in terms of its performance for the different evaluation metrics. It is also not necessarily that the more complex the ML model, the more prediction accuracy can be achieved. The prediction performance of all models trained with SMOTE is much better than the performance of models trained without SMOTE. The study shows the potential of machine learning methods for predicting all-cause mortality using cardiorespiratory fitness data.
Keyphrases
  • machine learning
  • big data
  • resistance training
  • electronic health record
  • physical activity
  • artificial intelligence
  • body composition
  • high intensity
  • quality improvement