ARTORG Center for Biomedical Engineering Research, Diabetes Technology Research Group, University of Bern, Murtenstrasse 50, 3010 Bern, Switzerland.
Comput Methods Programs Biomed. 2013 Feb;109(2):116-25. doi: 10.1016/j.cmpb.2012.03.002. Epub 2012 Apr 12.
A novel adaptive approach for glucose control in individuals with type 1 diabetes under sensor-augmented pump therapy is proposed. The controller, is based on Actor-Critic (AC) learning and is inspired by the principles of reinforcement learning and optimal control theory. The main characteristics of the proposed controller are (i) simultaneous adjustment of both the insulin basal rate and the bolus dose, (ii) initialization based on clinical procedures, and (iii) real-time personalization. The effectiveness of the proposed algorithm in terms of glycemic control has been investigated in silico in adults, adolescents and children under open-loop and closed-loop approaches, using announced meals with uncertainties in the order of ±25% in the estimation of carbohydrates. The results show that glucose regulation is efficient in all three groups of patients, even with uncertainties in the level of carbohydrates in the meal. The percentages in the A+B zones of the Control Variability Grid Analysis (CVGA) were 100% for adults, and 93% for both adolescents and children. The AC based controller seems to be a promising approach for the automatic adjustment of insulin infusion in order to improve glycemic control. After optimization of the algorithm, the controller will be tested in a clinical trial.
提出了一种用于传感器增强型胰岛素泵治疗下 1 型糖尿病患者血糖控制的新型自适应方法。该控制器基于 Actor-Critic(AC)学习,灵感来自强化学习和最优控制理论的原理。所提出的控制器的主要特点是:(i)同时调整胰岛素基础率和推注剂量,(ii)基于临床程序进行初始化,(iii)实时个性化。使用公告餐食,并在碳水化合物估计值中存在 ±25%的不确定性,对开环和闭环方法下的成年人、青少年和儿童进行了模拟研究,以评估所提出算法在血糖控制方面的有效性。结果表明,即使在用餐中碳水化合物水平存在不确定性的情况下,该算法在所有三组患者中均能有效调节血糖。控制变异性网格分析(CVGA)的 A+B 区的百分比为成年人 100%,青少年和儿童为 93%。基于 AC 的控制器似乎是一种有前途的自动调整胰岛素输注的方法,以改善血糖控制。在对算法进行优化后,将在临床试验中对该控制器进行测试。