Veuillez utiliser cette adresse pour citer ce document : http://repository.enp.edu.dz/jspui/handle/123456789/11331
Titre: Prediction of hypoglycemia episodes in type 1 diabetes patients
Auteur(s): Lakehal, Mohamed Merouane
Beldjoudi, Samia, Directeur de thèse
Mots-clés: Hypoglycemia prediction
Continuous glucose monitoring (CGM)
Time series forecasting
Data imbalance
Diabetes management
Early warning system
Machine learning
Date de publication: 2025
Résumé: Hypoglycemia, defined as a blood glucose level below 70 mg/dL, is a serious risk for individuals with Type 1 Diabetes Mellitus (T1DM), potentially causing severe outcomes such as seizures or unconsciousness if not addressed in time. Continuous Glucose Monitoring (CGM) systems, though less invasive than finger-prick testing, suffer from a physiological lag of 5–20 minutes between blood and interstitial glucose levels, limiting their ability to warn patients early. This study proposes a predictive model to anticipate hypoglycemic events ahead of time, helping patients take preventive actions like carbohydrate intake. Using time-series CGM data, the model explores both univariate (CGM-only) and multivariate (including insulin and carbohydrate intake) inputs. It also addresses the challenge of data imbalance, with a focus on achieving high precision and recall to reduce false alarms. Results show that univariate models perform comparably to multivariate ones, making them practical for real-world use. Regression-based models also generalize better across test conditions than classification models. The model’s clinical validity is supported by Clarke error grid analysis, where over 98% of predictions fall in safe zones (A and B). This approach supports safer, proactive diabetes management through timely, CGM-based hypoglycemia prediction.
Description: Mémoire de Projet de Fin d’Études : Génie Industriel.Date Science et intelligence artificiel : Alger, École Nationale Polytechnique : 2025
URI/URL: http://repository.enp.edu.dz/jspui/handle/123456789/11331
Collection(s) :Département Génie industriel : Data Science_Intelligence Artificielle

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