Avaliação do uso de transfer learning para detecção de tumores cerebrais em imagens médicas
DOI:
https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1302Palavras-chave:
Transfer Learning, Rede Neural Convolucional, Tumor CerebralResumo
Objetivo: Com aumento da viabilidade da aplicação das neurais convolucionais (CNNs) foi objetivado avaliar o uso de desta tecnologia para a detecção de tumores cerebrais em imagens de ressonância magnética computadorizada Método: Foram desenvolvidos dois modelos distintos de CNNs, uma com o uso de Transfer learning e outra sem, para classificar a ocorrência de tumor cerebral. Resultados: foi obtido, com o modelo sem o uso de transfer learning uma acurácia de 99,67%, com sensibilidade de 100% e especificidade de 99,34%; já com o modelo que usou transfer learning, obteve uma acurácia de 98%, com sensibilidade de 98,32% e especificidade de 97,69%. Conclusão: Este estudo destaca a eficácia das CNNs na detecção de tumores cerebrais, sugerindo o uso de sistemas inteligentes como ferramentas de auxílio.
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