Evaluación de variaciones de la red EfficientNet en conjuntos dermatoscópicos

Autores/as

  • Newton Spolaôr Universidade Estadual do Oeste do Paraná
  • Huei Diana Lee UNIOESTE
  • Weber Shoity Resende Takaki Universidade Estadual do Oeste do Paraná
  • Claudio Saddy Rodrigues Coy UNICAMP
  • Feng Chung Wu UNIOESTE

DOI:

https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1337

Palabras clave:

Inteligencia Artificial, Informática Médica, Neoplasias Cutáneas

Resumen

Objetivo: Investigar configuraciones pioneras de la red profunda EfficientNet-B2 para clasificar pequeñas bases de datos dermatoscópicas. Método: Un enfoque para (1) preprocesamiento de imágenes, (2) clasificación con ocho configuraciones para ajustar una EfficientNet-B2 previamente entrenada y (3) evaluación de clasificadores con validación cruzada estratificada en tres bases de datos dermatoscópicas. Resultados: Todos los modelos superaron la línea de base. Se encontraron algunas diferencias estadísticas entre ellos. La mejor red alcanzó una precisión promedia de 98,33% en el conjunto público PH2. Conclusión: Algunas configuraciones pioneras de la red profunda fueron competitivas frente a referencias recientes en la clasificación de dermatoscopias.

Biografía del autor/a

Newton Spolaôr, Universidade Estadual do Oeste do Paraná

Doutor, Laboratório de Bioinformática, Universidade Estadual do Oeste do Paraná – LABI/UNIOESTE, Foz do Iguaçu (PR), Brasil.

Huei Diana Lee, UNIOESTE

Professor Associado-III Doutor, LABI/UNIOESTE, Foz do Iguaçu (PR), Brasil.

Weber Shoity Resende Takaki, Universidade Estadual do Oeste do Paraná

Doutor, Laboratório de Bioinformática, Universidade Estadual do Oeste do Paraná – LABI/UNIOESTE, Foz do Iguaçu (PR), Brasil.

Claudio Saddy Rodrigues Coy, UNICAMP

Professor Titular Doutor, Faculdade de Ciências Médicas, Universidade Estadual de Campinas – FCM/UNICAMP, Campinas (SP), Brasil.

Feng Chung Wu, UNIOESTE

Professor Associado-III Doutor, LABI/UNIOESTE, Foz do Iguaçu (PR), Brasil.

Citas

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Publicado

2024-11-19

Cómo citar

Spolaôr, N., Lee, H. D., Takaki, W. S. R., Coy, C. S. R., & Wu, F. C. (2024). Evaluación de variaciones de la red EfficientNet en conjuntos dermatoscópicos. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1337

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