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Prediction of Glucose Metabolism Disorder Risk Using a Machine Learning Algorithm: Pilot Study.

Katsutoshi MaetaYu NishiyamaKazutoshi FujibayashiToshiaki GunjiNoriko SasabeKimiko IijimaToshio Naito
Published in: JMIR diabetes (2018)
A machine learning approach, XGBoost, showed better prediction accuracy compared with LR, suggesting that advanced machine learning methods are useful for detecting the early signs of diabetes or GMD. The prediction accuracy increased when all OGTT variables were added. This indicates that complete OGTT information is important for predicting the future risk of diabetes and GMD accurately.
Keyphrases
  • machine learning
  • type diabetes
  • artificial intelligence
  • cardiovascular disease
  • deep learning
  • glycemic control
  • healthcare
  • metabolic syndrome
  • adipose tissue
  • weight loss
  • social media