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Meal-Detection in Patients with Type 1 Diabetes: A New Module for The Multivariable Adaptive Artificial Pancreas Control System

机译:1型糖尿病患者的膳食检测:多变量自适应人工胰腺控制系统的新模块

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摘要

A novel meal-detection algorithm is developed based on continuous glucose measurements. Bergman’s minimal model is modified and used in an unscented Kalman filter for state estimations. The estimated rate of appearance of glucose is used for meal detection. Data from nine subjects are used to assess the performance of the algorithm. The results indicate that the proposed algorithm works successfully with high accuracy. The average change in glucose levels between the meals and the detection points is 16(±9.42) [mg/dl] for 61 successfully detected meals and snacks. The algorithm is developed as a new module of an integrated multivariable adaptive artificial pancreas control system. Meal detection with the proposed method is used to administer insulin boluses and prevent most of post-prandial hyperglycemia without any manual meal announcements. A novel meal bolus calculation method is proposed and tested with the UVA/Padova simulator. The results indicate significant reduction in hyperglycemia.
机译:一种基于连续葡萄糖测量的新型膳食检测算法。修改了Bergman的最小模型,并在无味的Kalman滤波器中用于状态估计。估计的葡萄糖出现速率用于进餐检测。来自九个受试者的数据用于评估算法的性能。实验结果表明,该算法具有较高的精度。膳食和检测点之间的葡萄糖水平的平均变化,对于61个成功检测到的膳食和零食,为16(±9.42)[mg / dl]。该算法被开发为集成的多变量自适应人工胰腺控制系统的新模块。使用建议的方法进行膳食检测可用于注射胰岛素大剂量并预防大多数餐后高血糖症,而无需任何人工膳食通知。提出了一种新颖的膳食推注计算方法,并通过UVA / Padova模拟器进行了测试。结果表明高血糖明显降低。

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