Evaluating Deep Q-Learning Algorithms for Controlling Blood Glucose in In Silico Type 1 Diabetes
Permanent link
https://hdl.handle.net/10037/31914Date
2023-10-07Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Patients with type 1 diabetes must continually decide how much insulin to inject before
each meal to maintain blood glucose levels within a healthy range. Recent research has worked on a
solution for this burden, showing the potential of reinforcement learning as an emerging approach for
the task of controlling blood glucose levels. In this paper, we test and evaluate several deep Q-learning
algorithms for automated and personalized blood glucose regulation in an in silico type 1 diabetes
patient with the goal of estimating and delivering proper insulin doses. The proposed algorithms
are model-free approaches with no prior information about the patient. We used the Hovorka
model with meal variation and carbohydrate counting errors to simulate the patient included in this
work. Our experiments compare different deep Q-learning extensions showing promising results
controlling blood glucose levels, with some of the proposed algorithms outperforming standard
baseline treatment.
Publisher
MDPICitation
Angel, Hjerde S, Myhre, Godtliebsen. Evaluating Deep Q-Learning Algorithms for Controlling Blood Glucose in In Silico Type 1 Diabetes. Diagnostics (Basel). 2023;13(19)Metadata
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