Evaluación del aprendizaje por transferencia para la detección de tumores cerebrales en imágenes medicas

Autores/as

  • André Gonçalves Jardim UFCSPA
  • Carla Diniz Lopes Becker UFCSPA
  • Thatiane Alves Pianoski UFCSPA
  • Viviane Rodrigues Botelho UFCSPA

DOI:

https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1302

Palabras clave:

Aprendizaje por Transferencia, Red Neuronal Convolucional, Tumor Cerebral

Resumen

Objetivo: Con el aumento de la viabilidad de la aplicación de redes neuronales convolucionales (CNNs), se objetivó evaluar el uso de esta tecnología para la detección de tumores cerebrales en imágenes de resonancia magnética computarizada. Método: Se desarrollaron dos modelos distintos de CNN, uno con el uso de transferencia de aprendizaje y otro sin ella, para clasificar la ocurrencia de tumores cerebrales. Resultados: Se obtuvo, con el modelo sin el uso de transferencia de aprendizaje, una precisión del 99,67%, con una sensibilidad del 100% y una especificidad del 99,34%; con el modelo que usó transferencia de aprendizaje, se obtuvo una precisión del 98%, con una sensibilidad del 98,32% y una especificidad del 97,69%. Conclusión: Este estudio destaca la eficacia de las CNN en la detección de tumores cerebrales, sugiriendo el uso de sistemas inteligentes como herramientas auxiliares.

Biografía del autor/a

André Gonçalves Jardim, UFCSPA

Master’s Student, Federal University of Health Sciences of Porto Alegre – UFCSPA, Porto Alegre (RS), Brazil.

Carla Diniz Lopes Becker, UFCSPA

Ph.D., Federal University of Health Sciences of Porto Alegre – UFCSPA, DECESA, Porto Alegre (RS), Brazil.

Thatiane Alves Pianoski, UFCSPA

Ph.D., Federal University of Health Sciences of Porto Alegre – UFCSPA, DECESA, Porto Alegre (RS), Brazil.

Viviane Rodrigues Botelho, UFCSPA

Ph.D., Federal University of Health Sciences of Porto Alegre – UFCSPA, DECESA, Porto Alegre (RS), Brazil.

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Publicado

2024-11-19

Cómo citar

Jardim, A. G., Becker, C. D. L., Pianoski, T. A., & Botelho, V. R. (2024). Evaluación del aprendizaje por transferencia para la detección de tumores cerebrales en imágenes medicas. Journal of Health Informatics, 16(Especial). https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1302

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