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Predicting Falls in Long-term Care Facilities: Machine Learning Study.

Rahul ThapaAnurag GarikipatiSepideh ShokouhiMyrna HurtadoGina BarnesJana L HoffmanJacob CalvertLynne KatzmannQingqing MaoRitankar Das
Published in: JMIR aging (2022)
This study shows that the Extreme Gradient Boosting technique can use a large number of features from EHR data to make short-term fall predictions with a better performance than that of conventional fall risk assessments and other ML models. The integration of routinely collected EHR data, particularly vital signs, into fall prediction models may generate more accurate fall risk surveillance than models without vital signs. Our data support the use of ML models for dynamic, cost-effective, and automated fall predictions in different types of senior care facilities.
Keyphrases
  • electronic health record
  • machine learning
  • big data
  • palliative care
  • public health
  • artificial intelligence
  • deep learning
  • high throughput
  • mass spectrometry
  • health insurance