Literature DB >> 34861777

Incorporating Prior Information in Adaptive Model Predictive Control for Multivariable Artificial Pancreas Systems.

Xiaoyu Sun1, Mudassir Rashid2, Nicole Hobbs1, Rachel Brandt1, Mohammad Reza Askari2, Ali Cinar1,2.   

Abstract

BACKGROUND: 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.
METHODS: 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).
RESULTS: 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.
CONCLUSIONS: 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.

Entities:  

Keywords:  artificial pancreas systems; latent variable model; missing data; model predictive control; type 1 diabetes

Mesh:

Substances:

Year:  2021        PMID: 34861777      PMCID: PMC8875040          DOI: 10.1177/19322968211059149

Source DB:  PubMed          Journal:  J Diabetes Sci Technol        ISSN: 1932-2968


  21 in total

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

Authors:  Roman Hovorka; Valentina Canonico; Ludovic J Chassin; Ulrich Haueter; Massimo Massi-Benedetti; Marco Orsini Federici; Thomas R Pieber; Helga C Schaller; Lukas Schaupp; Thomas Vering; Malgorzata E Wilinska
Journal:  Physiol Meas       Date:  2004-08       Impact factor: 2.833

2.  "Learning" Can Improve the Blood Glucose Control Performance for Type 1 Diabetes Mellitus.

Authors:  Youqing Wang; Jinping Zhang; Fanmao Zeng; Na Wang; Xiaoping Chen; Bo Zhang; Dong Zhao; Wenying Yang; Claudio Cobelli
Journal:  Diabetes Technol Ther       Date:  2017-01-06       Impact factor: 6.118

3.  Considering Plasma Insulin Concentrations in Adaptive Model Predictive Control for Artificial Pancreas Systems.

Authors:  Iman Hajizadeh; Mudassir Rashid; Ali Cinar
Journal:  Annu Int Conf IEEE Eng Med Biol Soc       Date:  2018-07

4.  Plasma-Insulin-Cognizant Adaptive Model Predictive Control for Artificial Pancreas Systems.

Authors:  Iman Hajizadeh; Mudassir Rashid; Ali Cinar
Journal:  J Process Control       Date:  2019-04-10       Impact factor: 3.666

5.  Adaptive and Personalized Plasma Insulin Concentration Estimation for Artificial Pancreas Systems.

Authors:  Iman Hajizadeh; Mudassir Rashid; Sediqeh Samadi; Jianyuan Feng; Mert Sevil; Nicole Hobbs; Caterina Lazaro; Zacharie Maloney; Rachel Brandt; Xia Yu; Kamuran Turksoy; Elizabeth Littlejohn; Eda Cengiz; Ali Cinar
Journal:  J Diabetes Sci Technol       Date:  2018-03-23

6.  A Data-Driven Personalized Model of Glucose Dynamics Taking Account of the Effects of Physical Activity for Type 1 Diabetes: An In Silico Study.

Authors:  Jinyu Xie; Qian Wang
Journal:  J Biomech Eng       Date:  2019-01-01       Impact factor: 2.097

7.  In Silico Analysis of an Exercise-Safe Artificial Pancreas With Multistage Model Predictive Control and Insulin Safety System.

Authors:  Jose Garcia-Tirado; Patricio Colmegna; John P Corbett; Basak Ozaslan; Marc D Breton
Journal:  J Diabetes Sci Technol       Date:  2019-11
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  1 in total

Review 1.  Application of Artificial Intelligence in Discovery and Development of Anticancer and Antidiabetic Therapeutic Agents.

Authors:  Amal Alqahtani
Journal:  Evid Based Complement Alternat Med       Date:  2022-04-25       Impact factor: 2.650

  1 in total

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