Your browser doesn't support javascript.
loading
The effect of hair removal and filtering on melanoma detection: a comparative deep learning study with AlexNet CNN.
Quishpe-Usca, Angélica; Cuenca-Dominguez, Stefany; Arias-Viñansaca, Araceli; Bosmediano-Angos, Karen; Villalba-Meneses, Fernando; Ramírez-Cando, Lenin; Tirado-Espín, Andrés; Cadena-Morejón, Carolina; Almeida-Galárraga, Diego; Guevara, Cesar.
Afiliación
  • Quishpe-Usca A; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Cuenca-Dominguez S; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Arias-Viñansaca A; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Bosmediano-Angos K; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Villalba-Meneses F; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Ramírez-Cando L; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Tirado-Espín A; School of Mathematical and Computational Sciences, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Cadena-Morejón C; School of Mathematical and Computational Sciences, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Almeida-Galárraga D; School of Biological Sciences and Engineering, Yachay Tech University, San Miguel de Urcuquí, Imbabura, Ecuador.
  • Guevara C; Quantitative Methods Department, CUNEF Universidad, Madrid, Madrid, Spain.
PeerJ Comput Sci ; 10: e1953, 2024.
Article en En | MEDLINE | ID: mdl-38660169
ABSTRACT
Melanoma is the most aggressive and prevalent form of skin cancer globally, with a higher incidence in men and individuals with fair skin. Early detection of melanoma is essential for the successful treatment and prevention of metastasis. In this context, deep learning methods, distinguished by their ability to perform automated and detailed analysis, extracting melanoma-specific features, have emerged. These approaches excel in performing large-scale analysis, optimizing time, and providing accurate diagnoses, contributing to timely treatments compared to conventional diagnostic methods. The present study offers a methodology to assess the effectiveness of an AlexNet-based convolutional neural network (CNN) in identifying early-stage melanomas. The model is trained on a balanced dataset of 10,605 dermoscopic images, and on modified datasets where hair, a potential obstructive factor, was detected and removed allowing for an assessment of how hair removal affects the model's overall performance. To perform hair removal, we propose a morphological algorithm combined with different filtering techniques for comparison Fourier, Wavelet, average blur, and low-pass filters. The model is evaluated through 10-fold cross-validation and the metrics of accuracy, recall, precision, and the F1 score. The results demonstrate that the proposed model performs the best for the dataset where we implemented both a Wavelet filter and hair removal algorithm. It has an accuracy of 91.30%, a recall of 87%, a precision of 95.19%, and an F1 score of 90.91%.
Palabras clave

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: PeerJ Comput Sci Año: 2024 Tipo del documento: Article País de afiliación: Ecuador Pais de publicación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: PeerJ Comput Sci Año: 2024 Tipo del documento: Article País de afiliación: Ecuador Pais de publicación: Estados Unidos