An Online Stochastic Optimization Approach for Insulin Intensification in Type 2 Diabetes with Attention to Pseudo-Hypoglycemia
In this paper, we present a model free approach to calculate long-acting insulin doses for Type 2 Diabetic (T2D) subjects in order to bring their blood glucose (BG) concentration to be within a safe range. The proposed strategy tunes the parameters of a proposed control law by using a zeroth-order o...
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Zusammenfassung: | In this paper, we present a model free approach to calculate long-acting
insulin doses for Type 2 Diabetic (T2D) subjects in order to bring their blood
glucose (BG) concentration to be within a safe range. The proposed strategy
tunes the parameters of a proposed control law by using a zeroth-order online
stochastic optimization approach for a defined cost function. The strategy uses
gradient estimates obtained by a Recursive Least Square (RLS) scheme in an
adaptive moment estimation based approach named AdaBelief. Additionally, we
show how the proposed strategy with a feedback rating measurement can
accommodate for a phenomena known as relative hypoglycemia or
pseudo-hypoglycemia (PHG) in which subjects experience hypoglycemia symptoms
depending on how quick their BG concentration is lowered. The performance of
the insulin calculation strategy is demonstrated and compared with current
insulin calculation strategies using simulations with three different models. |
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DOI: | 10.48550/arxiv.2204.11380 |