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Journal ArticleDOI

Nonlinear model predictive control of glucose concentration in subjects with type 1 diabetes

TLDR
Adapt nonlinear model predictive control is promising for the control of glucose concentration during fasting conditions in subjects with type 1 diabetes.
Abstract
A nonlinear model predictive controller has been developed to maintain normoglycemia in subjects with type 1 diabetes during fasting conditions such as during overnight fast. The controller employs a compartment model, which represents the glucoregulatory system and includes submodels representing absorption of subcutaneously administered short-acting insulin Lispro and gut absorption. The controller uses Bayesian parameter estimation to determine time-varying model parameters. Moving target trajectory facilitates slow, controlled normalization of elevated glucose levels and faster normalization of low glucose values. The predictive capabilities of the model have been evaluated using data from 15 clinical experiments in subjects with type 1 diabetes. The experiments employed intravenous glucose sampling (every 15 min) and subcutaneous infusion of insulin Lispro by insulin pump (modified also every 15 min). The model gave glucose predictions with a mean square error proportionally related to the prediction horizon with the value of 0.2 mmol L(-1) per 15 min. The assessment of clinical utility of model-based glucose predictions using Clarke error grid analysis gave 95% of values in zone A and the remaining 5% of values in zone B for glucose predictions up to 60 min (n = 1674). In conclusion, adaptive nonlinear model predictive control is promising for the control of glucose concentration during fasting conditions in subjects with type 1 diabetes.

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Journal ArticleDOI

Meal Simulation Model of the Glucose-Insulin System

TL;DR: A new simulation model in normal humans that describes the physiological events that occur after a meal, by employing the quantitative knowledge that has become available in recent years, is presented.
Journal ArticleDOI

In Silico Preclinical Trials: A Proof of Concept in Closed-Loop Control of Type 1 Diabetes

TL;DR: A system for in silico testing of control algorithms that has been shown to represent adequate glucose fluctuations in T1DM observed during meal challenges, and has been accepted by the Food and Drug Administration as a substitute to animal trials in the preclinical testing of closed-loop control strategies.
Journal ArticleDOI

Artificial Pancreas: Past, Present, Future

TL;DR: The artificial pancreas (AP), known as closed-loop control of blood glucose in diabetes, is a system combining a glucose sensor, a control algorithm, and an insulin infusion device that has proved the feasibility of external glucose control and stimulated further technology development.
Journal ArticleDOI

Diabetes: Models, Signals, and Control

TL;DR: The control of diabetes is an interdisciplinary endeavor, which includes a significant biomedical engineering component, with traditions of success beginning in the early 1960s, and progressed to large-scale in silico experiments, and automated closed-loop control (artificial pancreas).
Journal ArticleDOI

Continuous glucose monitoring and closed-loop systems

TL;DR: This research presents a prototype of a closed‐loop system based on the combination of a continuous monitor, a control algorithm, and an insulin pump that addresses the challenge of integrating a continuous sensor into a continuous pump system.
References
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Book

Model Predictive Control

TL;DR: In this article, the authors present a model predictive controller for a water heating system, which is based on the T Polynomial Process (TOP) model of the MPC.
Journal ArticleDOI

Evaluating Clinical Accuracy of Systems for Self-Monitoring of Blood Glucose

TL;DR: An error grid analysis (EGA) is developed, which describes the clinical accuracy of SMBG systems over the entire range of blood glucose values, taking into account the absolute value of the system-generated glucose value, the relative difference between these two values, and the clinical significance of this difference.
Journal ArticleDOI

A model-based algorithm for blood glucose control in Type I diabetic patients

TL;DR: A model-based-predictive control algorithm is developed to maintain normoglycemia in the Type I diabetic patient using a closed-loop insulin infusion pump and outperforms an internal model controller from literature under noise-free conditions.
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