Artificial intelligence and maternal health: the Caren experience in Goiás

Authors

  • Matheus Saraiva Alcino Secretaria de Estado de Saúde
  • Pedro Manuel Rodrigues Secretaria de Estado de Saúde
  • Wanderson da Silva Marques Secretaria de Estado de Saúde
  • Carlos Augusto Gonçalves Tibiriça Secretaria de Estado de Saúde
  • Willian Farias Carvalho Oliveira Secretaria de Estado de Saúde
  • Diogo Antônio Leal Secretaria de Estado de Saúde

DOI:

https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1271

Keywords:

Optimization of Neonatal Care, Artificial Intelligence in Maternal Health, Caren

Abstract

Objective: The Caren application aims to enhance neonatal care management in public hospitals in Goiás, using artificial intelligence to predict levels of medical attention for newborns. Method: The application employs a supervised predictive model, trained with data from the Unified Health System, using integration and undersampling techniques to deal with imbalance. Results: The results show that the chosen model, prioritizing recall, demonstrated effectiveness, highlighting a conservative approach. Temporal analysis indicates the need for caution in predictions after the first day of life. Conclusion: Caren is an innovative tool for efficient management of neonatal resources, signaling advances in maternal health.

Author Biographies

Matheus Saraiva Alcino, Secretaria de Estado de Saúde

Cientista de dados, Gerência de Inovação, Secretaria de Estado de Saúde, Goiânia (GO), Brasil.

Pedro Manuel Rodrigues, Secretaria de Estado de Saúde

Cientista de dados, Gerência de Inovação, Secretaria de Estado de Saúde, Goiânia (GO), Brasil.

Wanderson da Silva Marques, Secretaria de Estado de Saúde

Cientista de dados, Gerência de Inovação, Secretaria de Estado de Saúde, Goiânia (GO), Brasil.

Carlos Augusto Gonçalves Tibiriça, Secretaria de Estado de Saúde

Cientista de dados, Gerência de Inovação, Secretaria de Estado de Saúde, Goiânia (GO), Brasil.

Willian Farias Carvalho Oliveira, Secretaria de Estado de Saúde

Cientista de dados, Gerência de Inovação, Secretaria de Estado de Saúde, Goiânia (GO), Brasil.

Diogo Antônio Leal, Secretaria de Estado de Saúde

Cientista de dados, Gerência de Inovação, Secretaria de Estado de Saúde, Goiânia (GO), Brasil.

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Published

2024-11-19

How to Cite

Alcino, M. S., Rodrigues, P. M., Marques, W. da S., Tibiriça, C. A. G., Oliveira, W. F. C., & Leal, D. A. (2024). Artificial intelligence and maternal health: the Caren experience in Goiás. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1271

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