Artículos de revistas
Using wavelet sub-band and fuzzy 2-partition entropy to segment chronic lymphocytic leukemia images
Fecha
2018-03-01Registro en:
Applied Soft Computing Journal, v. 64, p. 49-58.
1568-4946
10.1016/j.asoc.2017.11.039
2-s2.0-85037999945
2-s2.0-85037999945.pdf
2139053814879312
Autor
Computer Science and Cognition
Universidade Federal de Uberlândia (UFU)
Universidade Estadual Paulista (Unesp)
Institución
Resumen
Histological images analysis is an important procedure to diagnose different types of cancer. One of them is the chronic lymphocytic leukemia (CLL), which can be identified by applying image segmentation techniques. This study presents an unsupervised method to segment neoplastic nuclei in CLL images. Firstly, deconvolution, histogram equalization and mean filter were applied to enhance nuclear regions. Then, a segmentation technique based on a combination of wavelet transform, fuzzy 2-partition entropy and genetic algorithm was used, followed by removal of false positive regions, and application of valley-emphasis and morphological operations. In order to evaluate the proposed algorithm H&E-stained histological images were used. In the accuracy metric, the proposed method attained more than 80%, which can surpass similar methods. This proposal presents spatial distribution that has a good consistency with a manual segmentation and lower overlapping rate than other techniques in the literature.