Type 1 diabetes management using artificial pan-creas (AP) technology faces challenges in accurately regulating postprandial glucose levels. Current AP systems, based on heuris-tic control algorithms for basal insulin delivery, still require user input for mealtime insulin delivery. In the context of personalized patient-centered medicine, this study explores the impact of meal-related features on predicting postprandial basal insulin requirements using explainable artificial intelligence (XAI). Machine learning (ML) models were trained using preprandial blood glucose, mealtime insulin, preprandial basal insulin, and features from 15 T1D patients. The performance in terms of the root-mean-square-error (RMSE) and the mean-absolute-error (MSE) were (0.42 ± 0.1) insulin unit and (0.32 ± 0.07) insulin unit, respectively. Employing SHapley Additive exPlanations (SHAP) reveals significant influences of mealtime insulin bolus, carbohy-drates, and glycemic load, aligning with physiological knowledge on postprandial glycemia response (PGR).

Explainable AI Assessment of Meal-Related Features Impact in Predicting Basal Insulin for Type I Diabetes / Annuzzi, Giovanni; Arpaia, Pasquale; Bozzetto, Lutgarda; Criscuolo, Sabatina; De Benedetto, Egidio; Pesola, Marisa. - (2024), pp. 396-401. (Intervento presentato al convegno 8th IEEE International Forum on Research and Technologies for Society and Industry Innovation, RTSI 2024 tenutosi a Politecnico di Milano - Polo Territoriale di Lecco, ita nel 2024) [10.1109/rtsi61910.2024.10761239].

Explainable AI Assessment of Meal-Related Features Impact in Predicting Basal Insulin for Type I Diabetes

Annuzzi, Giovanni;Arpaia, Pasquale;Bozzetto, Lutgarda;Criscuolo, Sabatina;De Benedetto, Egidio;Pesola, Marisa
2024

Abstract

Type 1 diabetes management using artificial pan-creas (AP) technology faces challenges in accurately regulating postprandial glucose levels. Current AP systems, based on heuris-tic control algorithms for basal insulin delivery, still require user input for mealtime insulin delivery. In the context of personalized patient-centered medicine, this study explores the impact of meal-related features on predicting postprandial basal insulin requirements using explainable artificial intelligence (XAI). Machine learning (ML) models were trained using preprandial blood glucose, mealtime insulin, preprandial basal insulin, and features from 15 T1D patients. The performance in terms of the root-mean-square-error (RMSE) and the mean-absolute-error (MSE) were (0.42 ± 0.1) insulin unit and (0.32 ± 0.07) insulin unit, respectively. Employing SHapley Additive exPlanations (SHAP) reveals significant influences of mealtime insulin bolus, carbohy-drates, and glycemic load, aligning with physiological knowledge on postprandial glycemia response (PGR).
2024
Explainable AI Assessment of Meal-Related Features Impact in Predicting Basal Insulin for Type I Diabetes / Annuzzi, Giovanni; Arpaia, Pasquale; Bozzetto, Lutgarda; Criscuolo, Sabatina; De Benedetto, Egidio; Pesola, Marisa. - (2024), pp. 396-401. (Intervento presentato al convegno 8th IEEE International Forum on Research and Technologies for Society and Industry Innovation, RTSI 2024 tenutosi a Politecnico di Milano - Polo Territoriale di Lecco, ita nel 2024) [10.1109/rtsi61910.2024.10761239].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/997153
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