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Biomédica

Print version ISSN 0120-4157On-line version ISSN 2590-7379

Abstract

HOYOS, William; HOYOS, Kenia  and  RUIZ-PEREZ, Rander. Artificial intelligence model for early detection of diabetes. Biomed. [online]. 2023, vol.43, suppl.3, pp.110-125.  Epub Dec 29, 2023. ISSN 0120-4157.  https://doi.org/10.7705/biomedica.7147.

Introduction.

Diabetes is a chronic disease characterized by a high blood glucose level. It can lead to complications that affect the quality of life and increase the costs of healthcare. In recent years, prevalence and mortality rates have increased worldwide. The development of models with high predictive performance can help in the early identification of the disease.

Objective.

To develope a model based on artificial intelligence to support clinical decision-making in the early detection of diabetes.

Materials and methods.

We conducted a cross-sectional study, using a dataset that contained age, signs, and symptoms of patients with diabetes and of healthy individuals. Pre-processing techniques were applied to the data. Subsequently, we built the model based on fuzzy cognitive maps. Performance was evaluated with three metrics: accuracy, specificity, and sensitivity.

Results.

The developed model obtained an excellent predictive performance with an accuracy of 95%. In addition, it allowed to identify the behavior of the variables involved using simulated iterations, which provided valuable information about the dynamics of the risk factors associated with diabetes.

Conclusions.

Fuzzy cognitive maps demonstrated a high value for the early identification of the disease and in clinical decision-making. The results suggest the potential of these approaches in clinical applications related to diabetes and support their usefulness in medical practice to improve patient outcomes.

Keywords : diabetes/diagnosis; forecasting; risk factors; clinical decision support system; artificial intelligence.

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