AI Article Synopsis

  • The study aimed to create and validate models that predict risks related to glucose levels (like high and low sugar levels) using continuous glucose monitoring (CGM) data to help patients and healthcare providers take preventive measures.
  • Researchers analyzed data from 187 type 1 diabetes patients and developed three different prediction models, with XGBoost performing the best in accurately predicting hyperglycemia, hypoglycemia, and glycemic variability.
  • The results showed that these models are effective in predicting risks for unstable glycemic control, demonstrating strong performance in both the original group and in external tests with additional patients.

Article Abstract

Background And Objective: The aim of this study was to develop and validate explainable prediction models based on continuous glucose monitoring (CGM) and baseline data to identify a week-to-week risk of CGM key metrics (hyperglycemia, hypoglycemia, glycemic variability). By having a weekly prediction of CGM key metrics, it is possible for the patient or health care personnel to take immediate preemptive action.

Methods: We analyzed, trained, and internally tested three prediction models (Logistic regression, XGBoost, and TabNet) using CGM data from 187 type 1 diabetes patients with long-term CGM monitoring. A binary classification approach combined with feature engineering deployed on the CGM signals was used to predict hyperglycemia, hypoglycemia, and glycemic variability based on consensus targets (time above range ≥5%, time below range ≥4%, coefficient of variation ≥36%). The models were validated in two independent cohorts with a total of 223 additional patients of varying ages.

Results: A total of 46 593 weeks of CGM data were included in the analysis. For the best model (XGBoost), the area under the receiver operating characteristic curve (ROC-AUC) was 0.9 [95% confidence interval (CI) = 0.89-0.91], 0.89 [95% CI = 0.88-0.9], and 0.8 [95% CI = 0.79-0.81] for predicting hyperglycemia, hypoglycemia, and glycemic variability in the interval validation, respectively. The validation test showed good generalizability of the models with ROC-AUC of 0.88 to 0.95, 0.84 to 0.89, and 0.80 to 0.82 for predicting the glycemic outcomes.

Conclusion: Prediction models based on real-world CGM data can be used to predict the risk of unstable glycemic control in the forthcoming week. The models showed good performance in both internal and external validation cohorts.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11571614PMC
http://dx.doi.org/10.1177/19322968241286907DOI Listing

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