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WorldCist'23 - 11st World Conference on Information Systems and Technologies

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Breast Cancer Stage Determination Using Deep Learning

Ki-67 is a non-histone nuclear protein located in the nuclear cortex and is one of the essential biomarkers used to provide the proliferative status of cancer cells. Because of the variability in color, morphology and intensity of the cell nuclei Ki-67 is sensitive to chemotherapy and radiation therapy. The proliferation index is usually calculated visually by professional pathologists who assess the total percentage of positive (labeled) cells. This semi-quantitative counting can be the source of some inter- and intra-observer variability and is time consuming. These factors open up a new field of scientific and technological research and development. Artificial intelligence is attracting attention to solve these problems. Our solution is based on deep learning to calculate the percentage of cells labeled by ki-67 protein. The tumor area with x40 magnification is given by the pathologist to use to segment different types of positive, negative or TIL (tumor infiltrating lymphocytes) cells. The calculation of the percentage comes after the counting of the cells using classical image processing techniques. To give the model our satisfaction, we make a comparison with other datasets of the test and we compare it with the diagnosis of pathologists.

Elmehdi Aniq
LS3M, Polydisciplinary Faculty of khouribga,Soultan Moulay Slimane University; LAMIGEP, EMSI Marrakech, Marrakech 40000
Morocco

Mohamed Chakraoui
LS3M, Polydisciplinary Faculty of khouribga,Soultan Moulay Slimane University
Morocco

Naoual Mouhni
LAMIGEP, EMSI
Morocco

Abderrahim Aboulfalah
Obstetrics Gynecology Department, Faculty of Medicine and Pharmacy, Cadi Ayyad University
Morocco

Hanane Rais
Pathological Anatomy Department, Faculty of Medicine and Pharmacy, Cadi Ayyad University
Morocco

 


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