AI Article Synopsis

  • The oral glucose tolerance test is not commonly used for diabetes screening due to its high cost and complexity, leading to misdiagnosis of patients with isolated post-challenge hyperglycemia (IPH).
  • A diagnostic system, the IPH Diagnosis System (IPHDS), was developed using data from over 54,000 participants, employing machine learning algorithms to identify individuals with IPH based on ten selected features.
  • The IPHDS demonstrated a strong performance with an AUC of 0.823 in external validation, showing better accuracy than existing models, and is available online for instant predictions, making it a practical tool for diabetes screening in the general population.

Article Abstract

Introduction: Due to the high cost and complexity, the oral glucose tolerance test is not adopted as the screening method for identifying diabetes patients, which leads to the misdiagnosis of patients with isolated post-challenge hyperglycemia (IPH), that is., patients with normal fasting plasma glucose (<7.0 mmoL/L) and abnormal 2-h postprandial blood glucose (≥11.1 mmoL/L). We aimed to develop a model to differentiate individuals with IPH from the normal population.

Methods: Data from 54301 eligible participants were obtained from the Risk Evaluation of Cancers in Chinese Diabetic Individuals: a longitudinal (REACTION) study in China. Data from 37740 participants were used to develop the diagnostic system. External validation was performed among 16561 participants. Three machine learning algorithms were used to create the predictive models, which were further evaluated by various classification algorithms to establish the best predictive model.

Results: Ten features were selected to develop an IPH diagnosis system (IPHDS) based on an artificial neural network. In external validation, the AUC of the IPHDS was 0.823 (95% CI 0.811-0.836), which was significantly higher than the AUC of the Taiwan model [0.799 (0.786-0.813)] and that of the Chinese Diabetes Risk Score model [0.648 (0.635-0.662)]. The IPHDS model had a sensitivity of 75.6% and a specificity of 74.6%. This model outperformed the Taiwan and CDRS models in subgroup analyses. An online site with instant predictions was deployed at https://app-iphds-e1fc405c8a69.herokuapp.com/.

Conclusions: The proposed IPHDS could be a convenient and user-friendly screening tool for diabetes during health examinations in a large general population.

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Source
http://dx.doi.org/10.1002/dmrr.3832DOI Listing

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