Department of Biomedical Engineering, Illinois Institute of Technology, Chicago, IL, USA.
Department of Chemical and Biological Engineering, Illinois Institute of Technology, Chicago, IL, USA.
J Diabetes Sci Technol. 2022 Jan;16(1):19-28. doi: 10.1177/19322968211059149. Epub 2021 Dec 3.
Adaptive model predictive control (MPC) algorithms that recursively update the glucose prediction model are shown to be promising in the development of fully automated multivariable artificial pancreas systems. However, the recursively updated glycemic prediction models do not explicitly consider prior knowledge in the identification of the model parameters. Prior information of the glycemic effects of meals and physical activity can improve model accuracy and yield better glycemic control algorithms.
A glucose prediction model based on regularized partial least squares (rPLS) method where the prior information is encoded as the regularization term is developed to provide accurate predictions of the future glucose concentrations. An adaptive MPC is developed that incorporates dynamic trajectories for the glucose setpoint and insulin dosing constraints based on the estimated plasma insulin concentration (PIC). The proposed adaptive MPC algorithm is robust to disturbances caused by unannounced meals and physical activities even in cases with missing glucose measurements. The effectiveness of the proposed adaptive MPC based on rPLS is investigated with in silico subjects of the multivariable glucose-insulin-physiological variables simulator (mGIPsim).
The efficacy of the proposed adaptive MPC strategy in regulating the blood glucose concentration (BGC) of people with T1DM is assessed using the average percent time in range (TIR) for glucose, defined as 70 to 180 mg/dL inclusive, and the average percent time in hypoglycemia (<70 and >54 mg/dL) and level 2 hypoglycemia (≤54 mg/dL). The TIR for a cohort of 20 virtual subjects of mGIPsim is 81.9% ± 7.4% (with no hypoglycemia or severe hypoglycemia) for the proposed MPC compared with 73.9% ± 7.6% (0.2% ± 0.1% in hypoglycemia and 0.1% ± 0.1% in level 2 hypoglycemia) for an MPC based on a recursive autoregressive exogenous (ARX) model.
The adaptive MPC algorithm that incorporates prior knowledge in the recursive updating of the glucose prediction model can contribute to the development of fully automated artificial pancreas systems that can mitigate meal and physical activity disturbances.
递归更新血糖预测模型的自适应模型预测控制(MPC)算法在开发全自动多变量人工胰腺系统方面显示出很大的潜力。然而,递归更新的血糖预测模型并没有在模型参数识别中明确考虑先验知识。膳食和体力活动对血糖影响的先验信息可以提高模型的准确性,并产生更好的血糖控制算法。
提出了一种基于正则化偏最小二乘法(rPLS)的血糖预测模型,该模型将先验信息编码为正则化项,以提供未来血糖浓度的准确预测。在此基础上,开发了一种自适应 MPC,该 MPC 根据估计的血浆胰岛素浓度(PIC),纳入了血糖设定点和胰岛素剂量约束的动态轨迹。所提出的基于 rPLS 的自适应 MPC 算法对未通知的膳食和体力活动引起的干扰具有鲁棒性,即使在血糖测量缺失的情况下也是如此。使用多变量血糖-胰岛素-生理变量模拟器(mGIPsim)的虚拟受试者对基于 rPLS 的自适应 MPC 的有效性进行了研究。
使用平均血糖时间百分比(TIR)评估了该自适应 MPC 策略对 T1DM 患者血糖控制的效果,TIR 定义为 70 至 180mg/dL inclusive,以及平均低血糖时间百分比(<70 和 >54mg/dL)和 2 级低血糖时间百分比(≤54mg/dL)。与基于递归自回归外生(ARX)模型的 MPC 相比,mGIPsim 的 20 个虚拟受试者队列的 TIR 为 81.9%±7.4%(无低血糖或严重低血糖),而基于 MPC 的 TIR 为 73.9%±7.6%(0.2%±0.1%的低血糖和 0.1%±0.1%的 2 级低血糖)。
在血糖预测模型的递归更新中纳入先验知识的自适应 MPC 算法有助于开发全自动人工胰腺系统,该系统可以减轻膳食和体力活动的干扰。