Machine learning to aid in the diagnosis of chronic obstructive pulmonary disease

Authors

  • Ranier Pereira Nunes de Melo PUC Minas
  • Marco Paulo Soares Gomes PUC Minas
  • Luis Enrique Zárate PUC Minas

DOI:

https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1249

Keywords:

Pulmonary disease, chronic obstructive, Data mining, Knowledge discovery

Abstract

Objective: to identify risk factors for the Chronic obstructive pulmonary disease in the Brazilian population. Method: through a process for knowledge discovery, and machine learning models, identify risk factors for the disease in the Brazilian population, based on the 2019 National Health Survey. Results: the best learning model was achieved with the algorithm Random Forest presenting an F1 measure of 75% for the test set. Conclusions: based on the analysis of the level of importance of the main factors such as asthma, age at risk, previous smoking, body mass index, household risk, among others, the first four stood out as the main risk factors.

Author Biographies

Ranier Pereira Nunes de Melo, PUC Minas

Bac., Ciência de Dados, PUC Minas, Belo Horizonte (MG), Brasil

Marco Paulo Soares Gomes, PUC Minas

Dr., Ciência de Dados, PUC Minas, Belo Horizonte (MG), Brasil

Luis Enrique Zárate, PUC Minas

Dr., Ciência de Dados, PUC Minas, Belo Horizonte (MG), Brasil

References

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Published

2024-11-19

How to Cite

de Melo, R. P. N., Gomes, M. P. S., & Zárate, L. E. (2024). Machine learning to aid in the diagnosis of chronic obstructive pulmonary disease. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1249

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