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Comparative Analysis of Predictive Interstitial Glucose Level Classification Models.

Svjatoslavs KistkinsTimurs MihailovsSergejs LobanovsValdis PīrāgsHarald SourijOthmar MoserDmitrijs Bļizņuks
Published in: Sensors (Basel, Switzerland) (2023)
Our findings suggest that different models may have varying strengths and weaknesses in predicting glucose level classes, and the choice of model should be carefully considered based on the specific requirements and context of the clinical application. The logistic regression model proved to be more accurate for the next 15 min, particularly in predicting hypoglycemia. However, the LSTM model outperformed logistic regression in predicting glucose level class for the next hour. Future research could explore hybrid models or ensemble approaches that combine the strengths of multiple models to further enhance the accuracy and reliability of glucose predictions.
Keyphrases
  • blood glucose
  • type diabetes
  • machine learning
  • blood pressure
  • high resolution
  • metabolic syndrome
  • mass spectrometry
  • neural network
  • glycemic control
  • weight loss
  • convolutional neural network
  • monte carlo