Distributed Assessment of Virtual Insulin-Pump Settings Using SmartCGMS and DMMS.R for Diabetes Treatment

Author:

Ubl MartinORCID,Koutny TomasORCID,Della Cioppa AntonioORCID,De Falco IvanoeORCID,Tarantino Ernesto,Scafuri Umberto

Abstract

Diabetes is a heterogeneous group of diseases that share a common trait of elevated blood glucose levels. Insulin lowers this level by promoting glucose utilization, thus avoiding short- and long-term organ damage due to the elevated blood glucose level. A patient with diabetes uses an insulin pump to dose insulin. The pump uses a controller to compute and dose the correct amount of insulin to keep blood glucose levels in a safe range. Insulin-pump controller development is an ongoing process aiming at fully closed-loop control. Controllers entering the market must be evaluated for safety. We propose an evaluation method that exploits an FDA-approved diabetic patient simulator. The method evaluates a Cartesian product of individual insulin-pump parameters with a fine degree of granularity. As this is a computationally intensive task, the simulator executes on a distributed cluster. We identify safe and risky combinations of insulin-pump parameter settings by applying the binomial model and decision tree to this product. As a result, we obtain a tool for insulin-pump settings and controller safety assessment. In this paper, we demonstrate the tool with the Low-Glucose Suspend and OpenAPS controllers. For average ± standard deviation, LGS and OpenAPS exhibited 1.7 ± 0.6% and 3.2 ± 1.8% of local extrema (i.e., good insulin-pump settings) out of all the entire Cartesian products, respectively. A continuous region around the best-discovered settings (i.e., the global extremum) of the insulin-pump settings spread across 4.0 ± 1.1% and 4.1 ± 1.3% of the Cartesian products, respectively.

Funder

University of West Bohemia

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference38 articles.

1. Jameson, J., Fauci, A., Kasper, D., Hauser, S., Longo, D., and Loscalzo, J. (2018). Harrison’s Principles of Internal Medicine (Vol.1 & Vol.2), McGraw-Hill Education. [20th ed.].

2. Hall, J., and Hall, M. (2020). Guyton and Hall Textbook of Medical Physiology, Elsevier. Guyton Physiology.

3. Age-related changes in glucose metabolism, hyperglycemia, and cardiovascular risk;Chia;Circ. Res.,2018

4. Evolving Use of Continuous Glucose Monitoring Beyond Intensive Insulin Treatment;Wright;Diabetes Technol. Ther.,2021

5. Lag time remains with newer real-time continuous glucose monitoring technology during aerobic exercise in adults living with type 1 diabetes;Zaharieva;Diabetes Technol. Ther.,2019

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