This paper employs a new approach to regulate the blood glucose level of type I diabetic patient under an intensive insulin treatment. The closed-loop control scheme incorporates expert knowledge about treatment by using reinforcement learning theory to maintain the normoglycemic average of 80 mg/dl and the normal condition for free plasma insulin concentration in severe initial state. The insulin delivery rate is obtained off-line by using Qlearning algorithm, without requiring an explicit model of the environment dynamics. The implementation of the insulin delivery rate, therefore, requires simple function evaluation and minimal online computations. Controller performance is assessed in terms of its ability to reject the effect of meal di...
This study provides a detailed explanation of a regulating mechanism of the blood glucose levels by ...
Restricted until 27 Mar. 2010.In this computational study, we develop two nonlinear control algorith...
With the advancements in reinforcement learning (RL), new variants of this artificial intelligence a...
Background: Type-1 diabetes is a condition caused by the lack of insulin hormone, which leads to an ...
Controlling blood glucose levels in diabetic patients is important for managing their health and qua...
Background: Type-1 diabetes is a condition caused by the lack of insulin hormone, which leads to an ...
In this paper, we test and evaluate policy gradient reinforcement learning for automated blood gluco...
A novel adaptive approach for glucose control in individuals with type 1 diabetes under sensor-augme...
Artificial pancreas is in the forefront of research towards the automatic insulin infusion for patie...
Automated control of blood glucose (BG) concentration with a fully automated artificial pancreas wil...
In this paper, the feedback control of glucose concentration in type I diabetic patients using subcu...
In this paper, the feedback control of glucose concentration in type I diabetic patients using subcu...
Current insulin therapy for patients with type 1 diabetes often results in high variability in blood...
Background: Diabetes mellitus (DM) is a common chronic disease with various complications. About 10%...
This study provides a detailed explanation of a regulating mechanism of the blood glucose levels by ...
This study provides a detailed explanation of a regulating mechanism of the blood glucose levels by ...
Restricted until 27 Mar. 2010.In this computational study, we develop two nonlinear control algorith...
With the advancements in reinforcement learning (RL), new variants of this artificial intelligence a...
Background: Type-1 diabetes is a condition caused by the lack of insulin hormone, which leads to an ...
Controlling blood glucose levels in diabetic patients is important for managing their health and qua...
Background: Type-1 diabetes is a condition caused by the lack of insulin hormone, which leads to an ...
In this paper, we test and evaluate policy gradient reinforcement learning for automated blood gluco...
A novel adaptive approach for glucose control in individuals with type 1 diabetes under sensor-augme...
Artificial pancreas is in the forefront of research towards the automatic insulin infusion for patie...
Automated control of blood glucose (BG) concentration with a fully automated artificial pancreas wil...
In this paper, the feedback control of glucose concentration in type I diabetic patients using subcu...
In this paper, the feedback control of glucose concentration in type I diabetic patients using subcu...
Current insulin therapy for patients with type 1 diabetes often results in high variability in blood...
Background: Diabetes mellitus (DM) is a common chronic disease with various complications. About 10%...
This study provides a detailed explanation of a regulating mechanism of the blood glucose levels by ...
This study provides a detailed explanation of a regulating mechanism of the blood glucose levels by ...
Restricted until 27 Mar. 2010.In this computational study, we develop two nonlinear control algorith...
With the advancements in reinforcement learning (RL), new variants of this artificial intelligence a...