Litcius/Paper detail

Enabling fully automated insulin delivery through meal detection and size estimation using Artificial Intelligence

Clara Mosquera-Lopez, Leah M. Wilson, Joseph El Youssef, Wade Hilts, Joseph Leitschuh, Deborah Branigan, Virginia Gabo, Jae Eom, Jessica R. Castle, Peter G. Jacobs

2023npj Digital Medicine48 citationsDOIOpen Access PDF

Abstract

We present a robust insulin delivery system that includes automated meal detection and carbohydrate content estimation using machine learning for meal insulin dosing called robust artificial pancreas (RAP). We conducted a randomized, single-center crossover trial to compare postprandial glucose control in the four hours following unannounced meals using a hybrid model predictive control (MPC) algorithm and the RAP system. The RAP system includes a neural network model to automatically detect meals and deliver a recommended meal insulin dose. The meal detection algorithm has a sensitivity of 83.3%, false discovery rate of 16.6%, and mean detection time of 25.9 minutes. While there is no significant difference in incremental area under the curve of glucose, RAP significantly reduces time above range (glucose >180 mg/dL) by 10.8% (P = 0.04) and trends toward increasing time in range (70-180 mg/dL) by 9.1% compared with MPC. Time below range (glucose <70 mg/dL) is not significantly different between RAP and MPC.

Topics & Concepts

PostprandialArtificial pancreasMealCrossover studyArtificial neural networkInsulinTarget rangeComputer scienceMedicineArtificial intelligenceInternal medicineEndocrinologyType 1 diabetesDiabetes mellitusPlaceboAlternative medicinePathologyDiabetes Management and ResearchPancreatic function and diabetesHyperglycemia and glycemic control in critically ill and hospitalized patients