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Evaluation of sparsity metrics and evolutionary algorithms applied for normalization of H&E histological images

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Autor(es):
Tosta, Thaina A. Azevedo ; de Faria, Paulo Rogerio ; Neves, Leandro Alves ; Martins, Alessandro Santana ; Kaushal, Chetna ; do Nascimento, Marcelo Zanchetta
Número total de Autores: 6
Tipo de documento: Artigo Científico
Fonte: PATTERN ANALYSIS AND APPLICATIONS; v. 27, n. 1, p. 13-pg., 2024-03-01.
Resumo

Color variations in H&E histological images can impact the segmentation and classification stages of computational systems used for cancer diagnosis. To address these variations, normalization techniques can be applied to adjust the colors of histological images. Estimates of stain color appearance matrices and stain density maps can be employed to carry out these color adjustments. This study explores these estimates by leveraging a significant biological characteristic of stain mixtures, which is represented by a sparsity parameter. Computationally estimating this parameter can be accomplished through various sparsity measures and evolutionary algorithms. Therefore, this study aimed to evaluate the effectiveness of different sparsity measures and algorithms for color normalization of H&E-stained histological images. The results obtained demonstrated that the choice of different sparsity measures significantly impacts the outcomes of normalization. The sparsity metric l(epsilon)(0) proved to be the most suitable for it. Conversely, the evolutionary algorithms showed little variations in the conducted quantitative analyses. Regarding the selection of the best evolutionary algorithm, the results indicated that particle swarm optimization with a population size of 250 individuals is the most appropriate choice. (AU)

Processo FAPESP: 22/03020-1 - Normalização de corantes H&E por autocodificadores com análises de ensemble learning para imagens histológicas
Beneficiário:Thaína Aparecida Azevedo Tosta
Modalidade de apoio: Auxílio à Pesquisa - Projeto Inicial