Blood Glucose Regulation Models in Artificial Pancreas for Type-1 Diabetic Patients

被引:0
作者
Abishek Chandrasekhar
Radhakant Padhi
机构
[1] Indian Institute of Science,Center for Cyber
来源
Journal of the Indian Institute of Science | 2023年 / 103卷
关键词
Artificial pancreas; Minimal models; Physiological modeling; Type-1 diabetes mellitus; Biomedical models;
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学科分类号
摘要
Development, validation, and testing of algorithms for artificial pancreas (AP) systems require mathematical models for the glucose–insulin dynamics inside the body. These physiological models have been extensively studied over the past decades. Two broad types of models are available in diabetic research, each with its own unique purpose: (i) minimal models, which are relatively simple but still manages to capture the macroscopic behavior of the glucose–insulin dynamics of the body, and (ii) high-fidelity models, which are complex and precisely describe the internal dynamics of the glucose–insulin interaction in the body. The minimal models are primarily utilized for control algorithm synthesis, whereas the high-fidelity models are used as platforms for testing and validating AP systems. The most well-known variants of these physiological models are discussed in detail. In addition to these systems, data-driven models such as the auto-regressive moving average with exogenous inputs (ARMAX) models are also used widely in control algorithm synthesis for AP systems. High-fidelity models are utilized for simulating virtual diabetic patients for in silico testing and validation of artificial pancreas systems. Two currently available high-fidelity models are reviewed in this paper for completeness, including the Type-1 diabetes mellitus (T1DM) simulator approved by the food and drug administration of USA. Models accounting for exercise and also glucagon infusion (for dual-hormone AP systems) are also included, which are essential in developing control algorithms with better autonomy and minimal risk.
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页码:353 / 364
页数:11
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  • [1] Sun H(2022)Idf diabetes atlas: global, regional and country-level diabetes prevalence estimates for 2021 and projections for 2045 Diabetes Res Clin Practice 183 109119-396
  • [2] Saeedi P(1974)An artificial endocrine pancreas Diabetes 23 389-298
  • [3] Karuranga S(2008)Simulation models for in silico testing of closed-loop glucose controllers in type 1 diabetes Drug Discov Today: Dis Models 5 289-444
  • [4] Pinkepank M(2019)A century of diabetes technology: signals, models, and artificial pancreas control Trends Endocrinol Metab 30 432-123
  • [5] Ogurtsova K(2014)The artificial pancreas: current status and future prospects in the management of diabetes Ann NY Acad Sci 1311 102-1467
  • [6] Duncan BB(1981)Physiologic evaluation of factors controlling glucose tolerance in man: measurement of insulin sensitivity and beta-cell glucose sensitivity from the response to intravenous glucose J Clin Investig 68 1456-1007
  • [7] Stein C(2002)Partitioning glucose distribution/transport, disposal, and endogenous production during ivgtt Am J Physiol Endocrinol Metab 282 992-1749
  • [8] Basit A(2007)Meal simulation model of the glucose-insulin system IEEE Trans Biomed Eng 54 1740-2086
  • [9] Chan JC(2017)Modeling subcutaneous absorption of fast-acting insulin in type 1 diabetes IEEE Trans Biomed Eng 65 2079-671
  • [10] Mbanya JC(2008)A subcutaneous insulin pharmacokinetic model for computer simulation in a diabetes decision support role: model structure and parameter identification J Diabetes Sci Technol 2 658-294