SciELO - Scientific Electronic Library Online

 
vol.32 número2Metasurfaces in the Antenna Design: An Introduction índice de autoresíndice de assuntospesquisa de artigos
Home Pagelista alfabética de periódicos  

Serviços Personalizados

Journal

Artigo

Indicadores

Links relacionados

  • Em processo de indexaçãoCitado por Google
  • Não possue artigos similaresSimilares em SciELO
  • Em processo de indexaçãoSimilares em Google

Compartilhar


Ciencia e Ingeniería Neogranadina

versão impressa ISSN 0124-8170versão On-line ISSN 1909-7735

Resumo

RIANO BORDA, Sebastián; GUARNIZO, José Guillermo; CAMACHO POVEDA, Edgar Camilo  e  MATEUS ROJAS, Armando. Automated Malignant Melanoma Classification Using Convolutional Neural Networks. Cienc. Ing. Neogranad. [online]. 2022, vol.32, n.2, pp.171-185.  Epub 30-Dez-2022. ISSN 0124-8170.  https://doi.org/10.18359/rcin.6270.

This research is proposed a design of architecture for melanoma (a kind of skin cancer) recognition by using a Convolutional Neural Network (CNN), work that will be useful for researchers in future projects in areas like biomedicine, machine learning, and others related moving forward with their studies and improving this proposal. CNN is mostly used in computer vision (a branch of artificial intelligence), applied to pattern recognition in skin moles and to determine the existence of malignant melanoma, or not, with a limited dataset. The CNN classifier designed and trained in this case was built through a couple of layers of convolution and pooling stacked to form a neural network of 6 layers followed by the fully connected to complete the architecture with an output classifier. The proposed database to train our CNN is the largest publicly collection of dermoscopic images of melanomas and other skin lesions, provided by the International Skin Imaging Collaboration (ISIC), sponsored by International Society for Digital Imaging of the Skin (ISDIS), an international effort to improve melanoma diagnosis. The purpose of this research was to design a Convolutional Neural Network with a high level of accuracy to help professionals in medicine with a melanoma diagnosis, in this case, it was possible to get accuracy up to 88.75 %.

Palavras-chave : Convolution; Convolutional Neural Networks; Dermoscopy; Melanoma Detection.

        · resumo em Espanhol     · texto em Inglês     · Inglês ( pdf )