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Personalized State-space Modeling of Glucose Dynamics for Type 1 Diabetes Using Continuously Monitored Glucose Insulin Dose and Meal Intake

机译:使用连续监测的葡萄糖胰岛素剂量和进餐量对1型糖尿病的葡萄糖动力学进行个性化状态空间建模

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摘要

An essential component of any artificial pancreas is on the prediction of blood glucose levels as a function of exogenous and endogenous perturbations such as insulin dose, meal intake, and physical activity and emotional tone under natural living conditions. In this article, we present a new data-driven state-space dynamic model with time-varying coefficients that are used to explicitly quantify the time-varying patient-specific effects of insulin dose and meal intake on blood glucose fluctuations. Using the 3-variate time series of glucose level, insulin dose, and meal intake of an individual type 1 diabetic subject, we apply an extended Kalman filter (EKF) to estimate time-varying coefficients of the patient-specific state-space model. We evaluate our empirical modeling using (1) the FDA-approved UVa/Padova simulator with 30 virtual patients and (2) clinical data of 5 type 1 diabetic patients under natural living conditions. Compared to a forgetting-factor-based recursive ARX model of the same order, the EKF model predictions have higher fit, and significantly better temporal gain and J index and thus are superior in early detection of upward and downward trends in glucose. The EKF based state-space model developed in this article is particularly suitable for model-based state-feedback control designs since the Kalman filter estimates the state variable of the glucose dynamics based on the measured glucose time series. In addition, since the model parameters are estimated in real time, this model is also suitable for adaptive control.
机译:任何人造胰腺的基本组成部分是预测血糖水平与外在和内在扰动的关系,例如在自然生活条件下的胰岛素剂量,进餐量,体力活动和情绪基调。在本文中,我们提出了一个具有时变系数的新的数据驱动状态空间动态模型,该模型用于明确量化胰岛素剂量和进餐量对血糖波动的时变患者特定影响。使用一个1型糖尿病个体的血糖水平,胰岛素剂量和进餐量的3个时间序列,我们应用扩展的卡尔曼滤波器(EKF)来评估患者特定状态空间模型的时变系数。我们使用以下方法评估我们的经验模型:(1)FDA批准的具有30位虚拟患者的UVa / Padova仿真器,以及(2)5位1型糖尿病患者在自然生活条件下的临床数据。与相同阶数的基于遗忘因子的递归ARX模型相比,EKF模型的预测具有更高的拟合度,并且时间增益和J指数显着提高,因此在早期检测葡萄糖的上升和下降趋势方面具有优势。本文开发的基于EKF的状态空间模型特别适用于基于模型的状态反馈控制设计,因为卡尔曼滤波器会根据测得的葡萄糖时间序列估算葡萄糖动力学的状态变量。另外,由于模型参数是实时估计的,因此该模型也适用于自适应控制。

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