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Explainable hypoglycemia prediction models through dynamic structured grammatical evolution.
De La Cruz, Marina; Garnica, Oscar; Cervigon, Carlos; Velasco, Jose Manuel; Hidalgo, J Ignacio.
Affiliation
  • De La Cruz M; Universidad Complutense de Madrid, Calle Prof. José García Santesmases,9, Madrid, 28040, Spain.
  • Garnica O; Universidad Complutense de Madrid, Calle Prof. José García Santesmases,9, Madrid, 28040, Spain.
  • Cervigon C; Universidad Complutense de Madrid, Calle Prof. José García Santesmases,9, Madrid, 28040, Spain.
  • Velasco JM; Universidad Complutense de Madrid, Calle Prof. José García Santesmases,9, Madrid, 28040, Spain. mvelascc@ucm.es.
  • Hidalgo JI; Universidad Complutense de Madrid, Calle Prof. José García Santesmases,9, Madrid, 28040, Spain.
Sci Rep ; 14(1): 12591, 2024 06 01.
Article in En | MEDLINE | ID: mdl-38824178
ABSTRACT
Effective blood glucose management is crucial for people with diabetes to avoid acute complications. Predicting extreme values accurately and in a timely manner is of vital importance to them. People with diabetes are particularly concerned about suffering a hypoglycemia (low value) event and, moreover, that the event will be prolonged in time. It is crucial to predict hyperglycemia (high value) and hypoglycemia events that may cause health damages in the short term and potential permanent damages in the long term. This paper describes our research on predicting hypoglycemia events at 30, 60, 90, and 120 minutes using machine learning methods. We propose using structured Grammatical Evolution and dynamic structured Grammatical Evolution to produce interpretable mathematical expressions that predict a hypoglycemia event. Our proposal generates white-box models induced by a grammar based on if-then-else conditions using blood glucose, heart rate, number of steps, and burned calories as the inputs for the machine learning technique. We apply these techniques to create three types of models individualized, cluster, and population-based. They all are then compared with the predictions of eleven machine learning techniques. We apply these techniques to a dataset of 24 real patients of the Hospital Universitario Principe de Asturias, Madrid, Spain. The resulting models, presented as if-then-else statements that incorporate numeric, relational, and logical operations between variables and constants, are inherently interpretable. The True Positive Rate and True Negative Rate metrics are above 0.90 for 30-minute predictions, 0.80 for 60 min, and 0.70 for 90 min and 120 min for the three types of models. Individualized models exhibit the best metrics, while cluster and population-based models perform similarly. Structured and dynamic structured grammatical evolution techniques perform similarly for all forecasting horizons. Regarding the comparison of different machine learning techniques, on the shorter forecasting horizons, our proposals have a high probability of winning, a probability that diminishes on the longer time horizons. Structured grammatical evolution provides advanced forecasting models that facilitate model explanation, modification, and retesting, offering flexibility for refining solutions post-creation and a deeper understanding of blood glucose behavior. These models have been integrated into the glUCModel application, designed to serve people with diabetes.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Blood Glucose / Machine Learning / Hypoglycemia Limits: Humans Language: En Journal: Sci Rep Year: 2024 Document type: Article Affiliation country: España Country of publication: Reino Unido

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Blood Glucose / Machine Learning / Hypoglycemia Limits: Humans Language: En Journal: Sci Rep Year: 2024 Document type: Article Affiliation country: España Country of publication: Reino Unido