Insulin therapy for Type 1 Diabetes (T1D) has several ramifications with different degrees of automation. The advances in sensors and monitoring devices have led to an increasing availability of data. Additionally, machine learning algorithms usage has sprung, allowing the development of models for Blood Glucose (BG) forecasting with relative ease. Nevertheless, BG forecasting is still a challenging task for prediction horizons beyond 30 min and, even more so, with missing or erroneous data, which is a common burden in the field. This thesis is devoted to generate machine learning models that forecast either BG levels using regression algorithms or postprandial hypoglycemia using classification algorithms. The application of these models ra...
This paper presents a methodological review of models for predicting blood glucose (BG) concentratio...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
In this thesis I propose a novel method to estimate the dose and injection-to-meal time for low-risk...
Insulin therapy for Type 1 Diabetes (T1D) has several ramifications with different degrees of automa...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Objective: This paper aims at proposing a new machine-learning based model to improve the calculatio...
Under glycemic variability, a characterization of the desired blood glucose (BG) behavior is needed ...
Objective: This paper aims at proposing a new machine-learning based model to improve the calculatio...
Background: Diabetes mellitus (DM) is a metabolic disorder that causes abnormal blood glucose (BG) r...
Il diabete di tipo 1 (T1D) è una malattia metabolica caratterizzata da una mancanza di produzione d...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
Nocturnal hypoglycemia (NH) is one of the most challenging events for multiple dose insulin therapy ...
In this thesis I propose a novel method to estimate the dose and injection-to-meal time for low-risk...
This paper presents a methodological review of models for predicting blood glucose (BG) concentratio...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
In this thesis I propose a novel method to estimate the dose and injection-to-meal time for low-risk...
Insulin therapy for Type 1 Diabetes (T1D) has several ramifications with different degrees of automa...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Objective: This paper aims at proposing a new machine-learning based model to improve the calculatio...
Under glycemic variability, a characterization of the desired blood glucose (BG) behavior is needed ...
Objective: This paper aims at proposing a new machine-learning based model to improve the calculatio...
Background: Diabetes mellitus (DM) is a metabolic disorder that causes abnormal blood glucose (BG) r...
Il diabete di tipo 1 (T1D) è una malattia metabolica caratterizzata da una mancanza di produzione d...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
Nocturnal hypoglycemia (NH) is one of the most challenging events for multiple dose insulin therapy ...
In this thesis I propose a novel method to estimate the dose and injection-to-meal time for low-risk...
This paper presents a methodological review of models for predicting blood glucose (BG) concentratio...
Machine learning techniques combined with wearable electronics can deliver accurate short-term blood...
In this thesis I propose a novel method to estimate the dose and injection-to-meal time for low-risk...