Optimal and sustainable control of blood glucose levels (BGLs) is the aim of type-1 diabetes management. The automated prediction of BGL using machine learning (ML) algorithms is considered as a promising tool that can support this aim. In this context, this paper proposes new advanced ML architectures to predict BGL leveraging deep learning and ensemble learning. The deep-ensemble models are developed with novel meta-learning approaches, where the feasibility of changing the dimension of a univariate time series forecasting task is investigated. The models are evaluated regression-wise and clinical-wise. The performance of the proposed ensemble models are compared with benchmark non-ensemble models. The results show the superior performanc...
The early prediction of diabetes can facilitate interventions to prevent or delay it. This study pro...
Diabetes is a chronic disease that affects millions of people worldwide, making it a major health co...
This paper proposes an RG hyperparameter optimization approach, based on a sequential use of random ...
Optimal and sustainable control of blood glucose levels (BGLs) is the aim of type-1 diabetes managem...
This article proposes two ensemble neural network-based models for blood glucose prediction at three...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Effective blood glucose (BG) control is essential for patients with diabetes. This calls for an imme...
Improving the prediction of blood glucose concentration may improve the quality of life of people li...
Patients with diabetes need to manage their blood glucose (BG) level to prevent diabetic complicatio...
Machine learning algorithms can be used to forecast future blood glucose (BG) levels for diabetes pa...
Diabetes is a long-lasting disease triggered by expanded sugar levels in human blood and can affect ...
The management of type 1 diabetes mellitus (T1DM) is a burdensome life-long task. In fact, T1DM indi...
A machine learning-based method for blood glucose level prediction thirty and sixty minutes in advan...
Background: Diabetes mellitus (DM) is a metabolic disorder that causes abnormal blood glucose (BG) r...
Fasting blood glucose is used as an indicator in the process of predicting diabetes risk. This resea...
The early prediction of diabetes can facilitate interventions to prevent or delay it. This study pro...
Diabetes is a chronic disease that affects millions of people worldwide, making it a major health co...
This paper proposes an RG hyperparameter optimization approach, based on a sequential use of random ...
Optimal and sustainable control of blood glucose levels (BGLs) is the aim of type-1 diabetes managem...
This article proposes two ensemble neural network-based models for blood glucose prediction at three...
Techniques using machine learning for short term blood glucose level prediction in patients with Typ...
Effective blood glucose (BG) control is essential for patients with diabetes. This calls for an imme...
Improving the prediction of blood glucose concentration may improve the quality of life of people li...
Patients with diabetes need to manage their blood glucose (BG) level to prevent diabetic complicatio...
Machine learning algorithms can be used to forecast future blood glucose (BG) levels for diabetes pa...
Diabetes is a long-lasting disease triggered by expanded sugar levels in human blood and can affect ...
The management of type 1 diabetes mellitus (T1DM) is a burdensome life-long task. In fact, T1DM indi...
A machine learning-based method for blood glucose level prediction thirty and sixty minutes in advan...
Background: Diabetes mellitus (DM) is a metabolic disorder that causes abnormal blood glucose (BG) r...
Fasting blood glucose is used as an indicator in the process of predicting diabetes risk. This resea...
The early prediction of diabetes can facilitate interventions to prevent or delay it. This study pro...
Diabetes is a chronic disease that affects millions of people worldwide, making it a major health co...
This paper proposes an RG hyperparameter optimization approach, based on a sequential use of random ...