Predicting COVID-19 hospitalizations with attribute selection based on genetic and classification algorithms

Authors

  • Miriam Pizzatto Colpo Federal University of Pelotas (UFPel) / Federal Institute of Education, Science and Technology Farroupilha (IFFar)
  • Bruno Cascaes Alves Federal University of Pelotas (UFPel) https://orcid.org/0000-0003-0401-0487
  • Kevin Soares Pereira Federal University of Pelotas (UFPel)
  • Anna Flávia Zimmermann Brandão Federal University of Pelotas (UFPel)
  • Marilton Sanchotene de Aguiar Federal University of Pelotas (UFPel)
  • Tiago Thompsen Primo Federal University of Pelotas (UFPel)

DOI:

https://doi.org/10.5753/isys.2022.2187

Keywords:

Feature selection, COVID-19, Genetic algorithm, Machine learning, Hospitalization prediction

Abstract

The COVID-19 pandemic has been pressuring the whole society and overloading hospital systems. Machine learning models designed to predict hospitalizations, for example, can contribute to better targeting hospital resources. However, as the excess of information, often irrelevant or redundant, can impair predictive models’ performance, we propose a hybrid approach to attribute selection in this work. This method aims to find an optimal attribute subset through a genetic algorithm, which considers the results of a classification model in its evaluation function to improve the hospitalization need prediction of COVID-19 patients. We evaluated this approach in two official databases from the State Health Secretariat of Rio Grande do Sul, covering COVID-19 cases registered up to October 2020 and June 2021, respectively. As a result, we provided an increase of 18% in the classification precision for patients with hospitalization necessities in the first database, while in the second one, considering a temporal evaluation with sliding window, this gain was on average 6%. In a real-time application, this would also mean greater precision in targeting resources and, consequently and mainly, improved service to the infected population.

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Published

2022-10-18

How to Cite

Pizzatto Colpo, M., Cascaes Alves, B., Soares Pereira, K., Zimmermann Brandão, A. F., Sanchotene de Aguiar, M., & Thompsen Primo, T. (2022). Predicting COVID-19 hospitalizations with attribute selection based on genetic and classification algorithms. ISys - Brazilian Journal of Information Systems, 15(1), 4:1–4:30. https://doi.org/10.5753/isys.2022.2187

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Extended versions of selected articles