Computer-Aided System with Machine Learning components for generating medical recommendations for type 1 diabetes patients
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Abstract
The paper presents an original method for processing medical data derived from a type 1 diabetes patient, aimed at generating therapeutic recommendations to improve the quality of the patient’s treatment. This problem is characterized by high complexity, the need to tailor the method to the available data, and the inability to conduct experiments other than computer simulations. The proposed approach introduces novel solutions, including the development of a computer model of a person with diabetes, the adaptation of a genetic algorithm to the specific problem, and the use of a time series similarity criterion for blood glucose concentration. The method was designed for patients using an insulin pump and a continuous glucose monitoring system. In the research section, data from five real patients were analyzed using the developed method, and the results indicated that it may be effective in supporting real-world therapy.
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References
American Diabetes Association Professional Practice Committee. (2024). 9. Pharmacologic approaches to glycemic treatment: Standards of care in diabetes—2024. Diabetes Care, 47(Supplement_1), S158–S178. https://doi.org/10.2337/dc24-S009
Buontempo, F. (2019). Genetic algorithms and machine learning for programmers. The Pragmatic Programmers.
Cobelli, C., & Kovatchev, B. (2023). Developing the UVA/Padova Type 1 Diabetes Simulator: Modeling, validation, refinements, and utility. Journal of Diabetes Science and Technology, 17(6), 1493-1505. https://doi.org/10.1177/19322968231195081
Cobelli, C., Man, C. D., Sparacino, G., Magni, L., De Nicolao, G., & Kovatchev, B. P. (2009). Diabetes: Models, signals, and control. IEEE Reviews in Biomedical Engineering, 2, 54–96. https://doi.org/10.1109/RBME.2009.2036073
Dalla Man, C., Rizza, R. A., & Cobelli, C. (2007). Meal simulation model of the glucose-insulin system. IEEE Transactions on Biomedical Engineering, 54(10), 1740–1749. https://doi.org/10.1109/TBME.2007.893506
Hanas, R. (2022). Type 1 diabetes in children, adolescents and young adults. Class Publishing.
Hermansson, G., & Sivertsson, R. (1996). Gender-related differences in gastric emptying rate of solid meals. Digestive Diseases and Sciences, 41(10), 1994–1998. https://doi.org/10.1007/bf02093602
Kirkman, M. S. (Ed.). (2022). Medical management of type 1 diabetes (8th ed.). American Diabetes Association.
Kovatchev, B. (2019). A century of diabetes technology: Signals, models, and artificial pancreas control. Trends in Endocrinology & Metabolism, 30(7), 432–444. https://doi.org/10.1016/j.tem.2019.04.008
Lehmann, E. D. (2004). Experience with the Internet release of AIDA v4.0 - http://www.diabetic.org.uk.aida.htm—an interactive educational diabetes simulator. Diabetes Technology & Therapeutics, 1(1), 41–54. https://doi.org/10.1089/152091599317567
Lehmann, E. D., Tarín, C., Bondia, J., Teufel, E., & Deutsch, T. (2007). Incorporating a generic model of subcutaneous insulin absorption into the AIDA v4 diabetes simulator: 1. A prospective collaborative development plan. Journal of Diabetes Science and Technology, 1(3), 423–435. https://doi.org/10.1177/193229680700100317
Man, C. D., Micheletto, F., Lv, D., Breton, M., Kovatchev, B., & Cobelli, C. (2014). The UVA/PADOVA Type 1 diabetes simulator: New features. Journal of Diabetes Science and Technology, 8(1), 26–34. https://doi.org/10.1177/1932296813514502
Michalewicz, Z. (2011). Genetic algorithms + data structures = evolution programs. Springer Nature.
NHS Tayside. (n.d.). Adjusting insulin. Retrieved April 28, 2025, from https://www.nhstayside.scot.nhs.uk/OurServicesA-Z/DiabetesOutThereDOTTayside/PROD_263751/index.htm
Nowicki, T. (2019). The insulin activity model based on insulin profiles. Journal of Computer Science Institute, 13, 272–278. https://doi.org/10.35784/jcsi.1294
Pańkowska, E., Ładyżyński, P., Foltyński, P., & Mazurczak, K. (2016). A randomized controlled study of an insulin dosing application that uses recognition and meal bolus estimations. Journal of Diabetes Science and Technology, 11(1), 43–49. https://doi.org/10.1177/1932296816683409
Sorensen, J. T. (1985). A physiologic model of glucose metabolism in man and its use to design and assess improved insulin therapies for diabetes (Doctoral dissertation, Massachusetts Institute of Technology). MIT DSpace.
The Elipson Group. (n.d.). A groundbreaking tool for Type 1 diabetes treatment R&D. https://tegvirginia.com/software/t1dms
Visentin, R., Campos-Náñez, E., Schiavon, M., Lv, D., Vettoretti, M., Breton, M., Kovatchev, B. P., Man, C. D., & Cobelli, C. (2018). The UVA/Padova Type 1 diabetes simulator goes from single meal to single day. Journal of Diabetes Science and Technology, 12(2), 273–281. https://doi.org/10.1177/1932296818757747
Wikipedia. (n.d.). AIDA interactive educational freeware diabetes simulator. Retrieved April 28, 2025, from https://en.wikipedia.org/wiki/AIDA_interactive_educational_freeware_diabetes_simulator
Zhang, Y., Sun, S., Jia, H., Qi, Y., Zhang, J., Lin, L., Chen, Y., Wang, W., & Ning, G. (2020). The optimized calculation method for insulin dosage in an insulin tolerance test (ITT): A randomized parallel control study. Frontiers in Endocrinology, 11, 202. https://doi.org/10.3389/fendo.2020.00202
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