餐后
餐食
人工胰腺
交叉研究
胰岛素
人工神经网络
目标射程
计算机科学
医学
人工智能
内科学
1型糖尿病
内分泌学
糖尿病
安慰剂
替代医学
病理
作者
Clara Mosquera-Lopez,Leah M. Wilson,Joseph El Youssef,Wade W. Hilts,Joseph Leitschuh,Deborah Branigan,Virginia Gabo,Jae H. Eom,Jessica R. Castle,Peter G. Jacobs
标识
DOI:10.1038/s41746-023-00783-1
摘要
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.
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