A tongue features fusion approach to predicting prediabetes and diabetes with machine learning

Feb 4, 2021Journal of biomedical informatics

Using tongue features and machine learning to predict prediabetes and diabetes

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Abstract

The GA_XGBT model achieved an average AUROC of 0.924 in predicting diabetes risk based on tongue features.

  • Machine learning techniques were utilized to develop a noninvasive diabetes risk prediction model using tongue images.
  • The model combines color and texture features extracted from tongue images with advanced features using deep learning.
  • Cross-validation demonstrated strong performance with an average accuracy of 0.821 and average F1-score of 0.813.
  • Testing on prediabetics yielded an AUROC of 0.914, while testing on diabetics resulted in an AUROC of 0.984.
  • The findings suggest that tongue image information may serve as a potential marker for early diagnosis of prediabetes and diabetes.

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