Autores
González Patiño David
Villuendas Rey Yenny
Argüelles Cruz Amadeo José
Título A Novel Bio-Inspired Method for Early Diagnosis of Breast Cancer through Mammographic Image Analysis
Tipo Revista
Sub-tipo JCR
Descripción Applied Sciences-Basel
Resumen Breast cancer is a current problem that causes the death of many women. In this work, we test meta-heuristics applied to the segmentation of mammographic images. Traditionally, the application of these algorithms has a direct relationship with optimization problems; however, in this study, its implementation is oriented to the segmentation of mammograms using the Dunn index as an optimization function, and the grey levels to represent each individual. The update of grey levels during the process results in the maximization of the Dunn's index function; the higher the index, the better the segmentation will be. The results showed a lower error rate using these meta-heuristics for segmentation compared to a well-adopted classical approach known as the Otsu method.
Observaciones DOI 10.3390/app9214492
Lugar Basel
País Suiza
No. de páginas Article number 4492
Vol. / Cap. v. 9 no. 21
Inicio 2019-11-01
Fin
ISBN/ISSN