Continuous glucose monitoring systems (CGMSs) allow measuring the blood glycaemic value of a diabetic patient at a high sampling rate, producing a considerable amount of data. These data can be effectively used by machine learning techniques to infer future values of the glycaemic concentration, allowing the early prevention of dangerous hyperglycaemic or hypoglycaemic states and better optimization of the diabetic treatment. Most of the approaches in the literature learn a prediction model from the past samples of the same patient, which needs extensive calibrations and limits the usability of the system. In this paper, we investigate the prediction models trained on glucose signals of a large and heterogeneous cohort of patients and then ...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
Machine learning algorithms can be used to forecast future blood glucose (BG) levels for diabetes pa...
Abstract Accurate prediction of blood glucose variations in type 2 diabetes (T2D) will facilitate be...
Continuous glucose monitoring systems (CGMSs) allow measuring the blood glycaemic value of a diabeti...
Diabetes is an autoimmune disease characterized by glucose levels dysfunctions. It involves continuo...
Diabetes is an autoimmune disease characterized by glucose levels dysfunctions. It involves continuo...
Diabetes type 1 is a chronic disease which is increasing at an alarming rate throughout the world. S...
High accuracy of blood glucose prediction over the long term is essential for preventative diabetes ...
In this study we investigate the need for training future blood glucose level prediction models at t...
Blood glucose (BG) monitoring devices play an important role in diabetes management, offering real t...
© 2013 IEEE. Control of blood glucose is essential for diabetes management. Current digital therapeu...
Improving the prediction of blood glucose concentration may improve the quality of life of people li...
Background and Aims: Continuous glucose monitoring (CGM) devices could be useful for real-time manag...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
The most important objective of any diabetes therapy is to maintain the blood glucose concentration ...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
Machine learning algorithms can be used to forecast future blood glucose (BG) levels for diabetes pa...
Abstract Accurate prediction of blood glucose variations in type 2 diabetes (T2D) will facilitate be...
Continuous glucose monitoring systems (CGMSs) allow measuring the blood glycaemic value of a diabeti...
Diabetes is an autoimmune disease characterized by glucose levels dysfunctions. It involves continuo...
Diabetes is an autoimmune disease characterized by glucose levels dysfunctions. It involves continuo...
Diabetes type 1 is a chronic disease which is increasing at an alarming rate throughout the world. S...
High accuracy of blood glucose prediction over the long term is essential for preventative diabetes ...
In this study we investigate the need for training future blood glucose level prediction models at t...
Blood glucose (BG) monitoring devices play an important role in diabetes management, offering real t...
© 2013 IEEE. Control of blood glucose is essential for diabetes management. Current digital therapeu...
Improving the prediction of blood glucose concentration may improve the quality of life of people li...
Background and Aims: Continuous glucose monitoring (CGM) devices could be useful for real-time manag...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
The most important objective of any diabetes therapy is to maintain the blood glucose concentration ...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
Machine learning algorithms can be used to forecast future blood glucose (BG) levels for diabetes pa...
Abstract Accurate prediction of blood glucose variations in type 2 diabetes (T2D) will facilitate be...