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Estimation of plasma insulin concentration under glycemic variability using nonlinear filtering techniques

机译:使用非线性滤波技术估计血糖变异性下血浆胰岛素浓度

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摘要

The ultimate goal of an artificial pancreas is finding the optimal insulin rates that can effectively reduce high blood glucose (BG) levels in type 1 diabetic patients. To achieve this, most closed-loop control strategies need to compute the optimal insulin action on the basis of precedent glucose and insulin levels. Unlike glucose levels which can be measured in real-time, unavailability of insulin sensors makes it essential the use of mathematical models to estimate plasma insulin concentrations. Between others, filtering techniques based on a generalization of the Kalman filter (KF) have been the most widely applied in the estimation of hidden states in nonlinear dynamic systems. Nevertheless, poor predictability of BG levels is a key issue since the glucose-insulin dynamics presents great inter- and intra-patient variability. Here, the question arises as to whether glycemic variability is not properly taken into account in models formulations and whether or it would compromise proper estimation of plasma insulin concentration. In order to tackle this point, a deterministic model describing glucose-insulin interaction plus a stochastic process to account for BG fluctuations were incorporated into the extended (EKF), cubature (CKF) and unscented (UKF) configurations of the Kalman filter to provide an estimate of the plasma insulin concentration. We found that for low glycemic variability, insulin state estimation can be attained with acceptable accuracy; however, as glycemic variability rises, Kalman filters rapidly degrade their performance as a consequence of large nonlinearities.
机译:人工胰腺的最终目标是发现最佳的胰岛素率,可​​有效降低1型糖尿病患者的高血糖(BG)水平。为实现这一目标,大多数闭环控制策略需要基于先前葡萄糖和胰岛素水平来计算最佳胰岛素作用。与可以实时测量的葡萄糖水平不同,胰岛素传感器的不可用使得使用数学模型来估算血浆胰岛素浓度的必要性。在其他情况下,基于卡尔曼滤波器(KF)的概括的过滤技术已经是非线性动态系统中隐藏状态的最广泛应用。然而,由于葡萄糖 - 胰岛素动态呈现出巨大和患者内部内变异性,因此BG水平的可预测性差是一个关键问题。在这里,该问题出现在模型制剂中是否不适当考虑血糖可变性以及是否会损害血浆胰岛素浓度的适当估计。为了解决这一点,描述葡萄糖 - 胰岛素相互作用加上随机过程以解释BG波动的确定性模型被纳入延长(EKF),Cubature(CKF)和Kalman滤波器的Unscented(UKF)配置,以提供一个估计血浆胰岛素浓度。我们发现,对于低血糖可变性,可以以可接受的准确度实现胰岛素状态估计;然而,随着血糖变异性上升,卡尔曼滤波器随着大型非线性的结果迅速降低了它们的性能。

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