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dc.contributor.authorChushig-Muzo, David
dc.contributor.authorCalero-Díaz, Hugo
dc.contributor.authorFabelo, Himar
dc.contributor.authorÅrsand, Eirik
dc.contributor.authorvan Dijk, Peter Ruben
dc.contributor.authorSoguero-Ruiz, Cristina
dc.date.accessioned2024-12-12T09:46:53Z
dc.date.available2024-12-12T09:46:53Z
dc.date.issued2024-10-29
dc.description.abstractContinuous glucose monitoring (CGM) represents a significant advancement in diabetes management, playing an important role in glycemic control for patients with type 1 diabetes (T1D). Despite their benefits, their performance is affected by numerous factors such as the carbohydrate intake, alcohol consumption, and physical activity (PA). Among these, PA could cause hypoglycemic episodes, which might happen after exercising. In this work, two main contributions are presented. First, we extend the performance evaluation of two glucose monitoring devices, Eversense and Free Style Libre (FSL), for measuring glucose concentrations during high-intensity PA and normal daily activity (NDA). The impact of PA is investigated considering (1) different glucose ranges (hypoglycemia, euglycemia, and hyperglycemia); and (2) four time periods throughout the day (morning, afternoon, evening, and night). Second, we evaluate the effectiveness of machine learning (ML) models, including logistic regression, K-nearest neighbors, and support vector machine, to automatically detect PA in T1D individuals using glucose measurements. The performance analysis showed significant differences between glucose levels obtained in the PA and NDA period for Eversense and FSL devices, specially in the hyperglycemic range and two time intervals (morning and afternoon). Both Eversense and FSL devices present measurements with large variability during strenuous PA, indicating that their users should be cautious. However, glucose recordings provided by monitoring devices are accurate for NDA, reaching similar values to capillary glucose device. Lastly, ML-based models yielded promising results to determine when an individual has performed PA, reaching an accuracy value of 0.93. The results can be used to develop an individualized datadriven classifier for each patient that categorizes glucose profiles based on the time interval during the day and according to if a patient performs PA. Our work contributes to the analysis of PA on the performance of CGM devices.en_US
dc.identifier.citationChushig-Muzo, Calero-Díaz, Fabelo, Årsand, van Dijk, Soguero-Ruiz. Characterizing the Impact of Physical Activity on Patients with Type 1 Diabetes Using Statistical and Machine Learning Models. Applied Sciences. 2024;14(21)en_US
dc.identifier.cristinIDFRIDAID 2327101
dc.identifier.doi10.3390/app14219870
dc.identifier.issn2076-3417
dc.identifier.urihttps://hdl.handle.net/10037/35963
dc.language.isoengen_US
dc.publisherMDPIen_US
dc.relation.journalApplied Sciences
dc.relation.projectIDinfo:eu-repo/grantAgreement/EC/H2020/ 101017385/EU/Watching the risk factors: Artificial intelligence and the prevention of chronic conditions/WARIFAen_US
dc.rights.accessRightsopenAccessen_US
dc.rights.holderCopyright 2024 The Author(s)en_US
dc.rights.urihttps://creativecommons.org/licenses/by/4.0en_US
dc.rightsAttribution 4.0 International (CC BY 4.0)en_US
dc.titleCharacterizing the Impact of Physical Activity on Patients with Type 1 Diabetes Using Statistical and Machine Learning Modelsen_US
dc.type.versionpublishedVersionen_US
dc.typeJournal articleen_US
dc.typeTidsskriftartikkelen_US
dc.typePeer revieweden_US


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Attribution 4.0 International (CC BY 4.0)
Except where otherwise noted, this item's license is described as Attribution 4.0 International (CC BY 4.0)