Explicabilidad en Modelos Predictivos de Machine Learning en Cáncer de Mama

Autores/as

  • Erika Yahata Universidade Federal do ABC
  • Erik Paul Winnikow Universidade do Extremo Sul Catarinense
  • Ricardo Suyama Universidade Federal do ABC
  • Priscyla Waleska Simões Universidade Federal do ABC

DOI:

https://doi.org/10.59681/2175-4411.v15.iEspecial.2023.1090

Palabras clave:

Cáncer de Mama, Aprendizaje Automático, Inteligencia Artificial

Resumen

Objetivo: La Inteligencia Artificial se muestra prometedora como apoyo a la toma de decisiones en el cáncer de mama; sin embargo, la interpretabilidad de los algoritmos como la caja negra puede contribuir a su adopción en la práctica clínica. El presente estudio presenta la explicabilidad en modelos predictivos de Aprendizaje Automático en cáncer de mama. Métodos: Se evaluaron dos enfoques diferentes de Aprendizaje Automático, Multilayer Perceptron (MLP) y Extreme Gradient Boosting (XGBoost), considerando una muestra de 164 mujeres que se sometieron a Core Biopsy entre 2014 y 2015. Se utilizó el Shapley Additive Explanation para la explicabilidad de los modelos. Resultados: Ambos modelos predictivos presentaron una precisión del 98,0% (95%IC: 94,2%-100,0%) y el BI-RADS® 5 en el ultrasonido fue considerado como el atributo más importante. Conclusión: Los modelos mostraron alta capacidad predictiva para el cáncer de mama; en el MLP, los estadios BI-RADS® 3 y 5 del ultrasonido fueron los más importantes, y en el modelo XGB, además del ultrasonido, se destacó la edad y el nódulo palpable.

Biografía del autor/a

Erika Yahata, Universidade Federal do ABC

Programa de Pós-Graduação em Engenharia da Informação, Centro de Engenharia, Modelagem e Ciências Sociais Aplicadas - CECS, Universidade Federal do ABC - UFABC, Santo André (SP), Brasil. Curso de Engenharia Biomédica, Centro de Engenharia, Modelagem e Ciências Sociais Aplicadas - CECS, Universidade Federal do ABC - UFABC, São Bernardo do Campo (SP), Brasil.

Erik Paul Winnikow, Universidade do Extremo Sul Catarinense

Curso de Medicina, Universidade do Extremo Sul Catarinense – UNESC, Criciúma (SC), Brasil.

Ricardo Suyama, Universidade Federal do ABC

Programa de Pós-Graduação em Engenharia da Informação, Centro de Engenharia, Modelagem e Ciências Sociais Aplicadas - CECS, Universidade Federal do ABC - UFABC, Santo André (SP), Brasil.

Priscyla Waleska Simões, Universidade Federal do ABC

Programa de Pós-Graduação em Engenharia da Informação, Centro de Engenharia, Modelagem e Ciências Sociais Aplicadas - CECS, Universidade Federal do ABC - UFABC, Santo André (SP), Brasil. Curso de Engenharia Biomédica, Centro de Engenharia, Modelagem e Ciências Sociais Aplicadas - CECS, Universidade Federal do ABC - UFABC, São Bernardo do Campo (SP), Brasil. Programa de Pós-Graduação em Engenharia Biomédica, Centro de Engenharia, Modelagem e Ciências Sociais Aplicadas - CECS, Universidade Federal do ABC - UFABC, São Bernardo do Campo (SP), Brasil.

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Publicado

2023-07-20

Cómo citar

Yahata, E., Winnikow, E. P., Suyama, R., & Simões, P. W. (2023). Explicabilidad en Modelos Predictivos de Machine Learning en Cáncer de Mama. Journal of Health Informatics, 15(Especial). https://doi.org/10.59681/2175-4411.v15.iEspecial.2023.1090

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