Establishment of noninvasive diabetes risk prediction model based on tongue features and machine learning techniques

Mar 1, 2021International journal of medical informatics

Noninvasive diabetes risk prediction using tongue features and machine learning

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Abstract

The non-invasive Stacking model achieved a classification accuracy of 71% for predicting diabetes risk in a test set.

  • The Stacking model demonstrated a micro average AUROC of 0.87 and a macro average AUROC of 0.84 on the test set of dataset 1.
  • In the critical blood glucose group, the Stacking model showed an AUROC of 0.84 and an AUPRC of 0.67.
  • The ResNet50 model achieved a classification accuracy of 69% on the validation set of dataset 2.
  • The ResNet50 model recorded a micro average AUROC of 0.84 and a micro average AUPRC of 0.73 on the validation set.
  • Both models exhibited high sensitivity and low false negative rates for detecting hyperglycemia.

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