NEAIApr 27, 2023

Modeling glycemia in humans by means of Grammatical Evolution

arXiv:2305.04827v138 citationsh-index: 22
Originality Incremental advance
AI Analysis

This work addresses the need for customized models to improve artificial pancreas systems for diabetes management, though it is incremental as it builds on existing evolutionary computation techniques.

The paper tackled the problem of personalized modeling of blood glucose levels in diabetes patients by applying Grammatical Evolution to create individualized models, achieving a mean percentage average error of 13.69% in tests with in-silico data.

Diabetes mellitus is a disease that affects to hundreds of millions of people worldwide. Maintaining a good control of the disease is critical to avoid severe long-term complications. In recent years, several artificial pancreas systems have been proposed and developed, which are increasingly advanced. However there is still a lot of research to do. One of the main problems that arises in the (semi) automatic control of diabetes, is to get a model explaining how glycemia (glucose levels in blood) varies with insulin, food intakes and other factors, fitting the characteristics of each individual or patient. This paper proposes the application of evolutionary computation techniques to obtain customized models of patients, unlike most of previous approaches which obtain averaged models. The proposal is based on a kind of genetic programming based on grammars known as Grammatical Evolution (GE). The proposal has been tested with in-silico patient data and results are clearly positive. We present also a study of four different grammars and five objective functions. In the test phase the models characterized the glucose with a mean percentage average error of 13.69\%, modeling well also both hyper and hypoglycemic situations.

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