Abstract Background: Continuous glucose monitoring (CGM) data can be exploited to prevent hypo-/hyperglycemic events in real time by forecasting future glucose levels. In the last few years, several glucose prediction algorithms have been proposed, but how to compare them (e.g., methods based on polynomial rather than autoregressive time-series models) and even how to determine the optimal parameter set for a given method (e.g., prediction horizon and forgetting) are open problems. Methods: A new index, J, is proposed to optimally design a prediction algorithm by taking into account two key components: the regularity of the predicted profile and the time gained thanks to prediction. Effectiveness of J is compared with previously proposed ...
Abstract: A clinically important task in diabetes management is the prevention of hypo-(and hyper-)...
International audienceBACKGROUND:Despite the risk associated with nocturnal hypoglycemia (NH) there ...
Abstract—We investigated the relative importance and predic-tive power of different frequency bands ...
Abstract Background: Continuous glucose monitoring (CGM) data can be exploited to prevent hypo-/hyp...
Aim: The aim of this article was to use continuous glucose error-grid analysis (CG-EGA) to assess th...
The most important objective of any diabetes therapy is to maintain the blood glucose concentration ...
Over the past decade, continuous glucose monitoring (CGM) has proven to be a very resourceful tool f...
A clinically important task in diabetes management is the prevention of hypo/hyperglycemic events. I...
Background: Estimation of future glucose concentrations is a crucial task for diabetes management. P...
BACKGROUND: Prediction of the future blood glucose (BG) evolution from continuous glucose monitorin...
Diabetes patients must manage their glucose level, so they should measure it. We proposed prediction...
Accurate glucose forecasting algorithms have been proven to be an effective solution for reducing th...
In diabetes, the mean square error (MSE) metric is extensively used for assessing glucose prediction...
Accurate glucose forecasting algorithms have been proven to be an effective solution for reducing th...
Type 1 diabetes mellitus (DM1) is a metabolic disease derived from falls in pancreatic insulin produ...
Abstract: A clinically important task in diabetes management is the prevention of hypo-(and hyper-)...
International audienceBACKGROUND:Despite the risk associated with nocturnal hypoglycemia (NH) there ...
Abstract—We investigated the relative importance and predic-tive power of different frequency bands ...
Abstract Background: Continuous glucose monitoring (CGM) data can be exploited to prevent hypo-/hyp...
Aim: The aim of this article was to use continuous glucose error-grid analysis (CG-EGA) to assess th...
The most important objective of any diabetes therapy is to maintain the blood glucose concentration ...
Over the past decade, continuous glucose monitoring (CGM) has proven to be a very resourceful tool f...
A clinically important task in diabetes management is the prevention of hypo/hyperglycemic events. I...
Background: Estimation of future glucose concentrations is a crucial task for diabetes management. P...
BACKGROUND: Prediction of the future blood glucose (BG) evolution from continuous glucose monitorin...
Diabetes patients must manage their glucose level, so they should measure it. We proposed prediction...
Accurate glucose forecasting algorithms have been proven to be an effective solution for reducing th...
In diabetes, the mean square error (MSE) metric is extensively used for assessing glucose prediction...
Accurate glucose forecasting algorithms have been proven to be an effective solution for reducing th...
Type 1 diabetes mellitus (DM1) is a metabolic disease derived from falls in pancreatic insulin produ...
Abstract: A clinically important task in diabetes management is the prevention of hypo-(and hyper-)...
International audienceBACKGROUND:Despite the risk associated with nocturnal hypoglycemia (NH) there ...
Abstract—We investigated the relative importance and predic-tive power of different frequency bands ...