2020
DOI: 10.2196/18912
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A Novel Approach for Continuous Health Status Monitoring and Automatic Detection of Infection Incidences in People With Type 1 Diabetes Using Machine Learning Algorithms (Part 2): A Personalized Digital Infectious Disease Detection Mechanism

Abstract: Background Semisupervised and unsupervised anomaly detection methods have been widely used in various applications to detect anomalous objects from a given data set. Specifically, these methods are popular in the medical domain because of their suitability for applications where there is a lack of a sufficient data set for the other classes. Infection incidence often brings prolonged hyperglycemia and frequent insulin injections in people with type 1 diabetes, which are significant anomalies. Despi… Show more

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Cited by 3 publications
(2 citation statements)
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“…Sometimes, infection occurrence could lead to hyperglycemia and repeated insulin injections in the T1DM subjects [ 212 ]. To create a personalized health model with the capability of forecasting the incidence of infection in people with T1DM, multiple boundaries and domain-based, density-based, reconstruction-based, and unsupervised models were constructed using insulin-to-carbohydrate ratio and blood glucose levels as input variables.…”
Section: The Application Of ML and Dl Models For The Management Predi...mentioning
confidence: 99%
See 1 more Smart Citation
“…Sometimes, infection occurrence could lead to hyperglycemia and repeated insulin injections in the T1DM subjects [ 212 ]. To create a personalized health model with the capability of forecasting the incidence of infection in people with T1DM, multiple boundaries and domain-based, density-based, reconstruction-based, and unsupervised models were constructed using insulin-to-carbohydrate ratio and blood glucose levels as input variables.…”
Section: The Application Of ML and Dl Models For The Management Predi...mentioning
confidence: 99%
“…100 subjects over a two-month scenario XBM [209] 250 24 h CGM plots SVR and multilayer perceptrons [210] 15 patients with T1DM SVR [211] 3 real subjects Multiple boundaries and domain-based, density-based, reconstruction-based, and unsupervised models [212] sometimes called by another name, decision stumps. This algorithm begins by constructing a decision stump and then ascribing identical weights to the whole of the data points.…”
Section: Modelsmentioning
confidence: 99%