Predicting outcomes for patients hospitalized with COVID-19

Authors

  • Vitoria Martins Rios State University of Rio de Janeiro
  • Matheus Figueiredo Nunes de Carvalho Posto de Saúde Municipal de Maricá
  • Rafaell Dutra Ramos Hospital Federal da Lagoa
  • Thiago Medeiros Carvalho State University of Rio de Janeiro
  • Cristiane Oliveira Faria State University of Rio de Janeiro

DOI:

https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1362

Keywords:

Explainable, COVID-19 Outcome, Machine Learning

Abstract

Objective: This study aims to evaluate the effectiveness of Machine Learning (ML) models in predicting outcomes for patients diagnosed with COVID-19 considering data from medical records and exams. Method: Several ML algorithms and Explainable techniques were investigated on clinical evolution data of patients admitted to the Pedro Ernesto University Hospital (HUPE) during the years 2020 and 2021. Results: The Random Forest model was found to be the most efficient, with an accuracy of 74% in the validation dataset. In addition, techniques based on Explainable Artificial Intelligence show that changes in the number of rods and the prescription of noradrenaline were the variables that had the greatest impact on predicting outcomes. Conclusion: The results encourage healthcare institutions to use methods based on decision support to organize or even prioritize care for their patients

Author Biographies

Vitoria Martins Rios, State University of Rio de Janeiro

Undergraduate Student, Mathematical and Statistics Institute, State University of Rio de Janeiro, Rio de Janeiro (RJ), Brazil

Matheus Figueiredo Nunes de Carvalho, Posto de Saúde Municipal de Maricá

M.D., Posto de Saúde Municipal de Maricá, Rio de Janeiro (RJ), Brazil

Rafaell Dutra Ramos, Hospital Federal da Lagoa

M.D., Hospital Federal da Lagoa, Rio de Janeiro (RJ), Brazil.

Thiago Medeiros Carvalho, State University of Rio de Janeiro

PhD Student/Lecturer, Mathematical and Statistics Institute, State University of Rio de Janeiro, Rio de Janeiro (RJ), Brazil

Cristiane Oliveira Faria, State University of Rio de Janeiro

PhD/Associate Professor, Mathematical and Statistics Institute, State University of Rio de Janeiro, Rio de Janeiro (RJ), Brazil.

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Published

2024-11-19

How to Cite

Rios, V. M., de Carvalho, M. F. N., Ramos, R. D., Carvalho, T. M., & Faria, C. O. (2024). Predicting outcomes for patients hospitalized with COVID-19. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1362

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