Artificial intelligence as a tool for diagnosis in digital pathology whole slide images: A systematic review

Journal of Pathology Informatics - Tập 13 - Trang 100138 - 2022
João Pedro Mazuco Rodriguez1,2, Rubens Rodriguez3, Vitor Werneck Krauss Silva2, Felipe Campos Kitamura2, Gustavo Cesar Antônio Corradi2, Ana Carolina Bertoletti de Marchi1, Rafael Rieder1
1University of Passo Fundo, Passo Fundo, Rio Grande do Sul, Brazil
2DasaInova, Diagnósticos da América S.A., São Paulo, Brazil
3Pathology Institute of Passo Fundo, Rio Grande do Sul, Brazil

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