Classification of WBC cell classification using fully connected convolution neural network

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Abstract

White blood cells (WBCs) are cells that is key factor of the immune systems which is help to our body fight off contagions and other diseases. In order to enhance the diagnosis of various diseases in medical field by using image processing techniques from the blood cells. In that, Leukemia is associated with one type of cancer of the blood and bone marrow. It is look like spongy tissue inside the bones where blood cells are made. In this paper, a fully connected. Convolution neural network is used to segmented and classification of blood cell microscope WBC images for healthy and unhealthy conditions. The performance of the classifier was analyzed. The accuracy sensitivity specificity and pression are 96.84%, 96.26%,97.35% and 96.39% respectively.

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Gokul Kannan, K., Ganesh Babu, T. R., Praveena, R., Sukumar, P., Sudha, G., & Birunda, M. (2023). Classification of WBC cell classification using fully connected convolution neural network. In Journal of Physics: Conference Series (Vol. 2466). Institute of Physics. https://doi.org/10.1088/1742-6596/2466/1/012033

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