Artificial intelligence

Scientific journal

ISSN 2710-1673

ONLINE: ISSN 2710-1681

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Histological and cytological images classification based on convolutional neural networks

Berezsky O.1, Pitsun O.1, Bodnar A.1, Dolynyuk T.1
1 Ternopil National Economic University

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UDC: 004.9
Publication Language: Ukrainian
Stuc. intelekt. 2017; 22(1):29-37

Abstract: Analysis of cytological and histological images of breast cancer precursors is conducted. The main components and models of CNM for the classification of images are analyzed. The model and structure of the convolutional neural network for the classification of histological and cytological images are developed in this paper. The comparative analysis with the existing algorithms of machine learning is conducted: the machine of the reference vectors, the method k - the nearest neighbors, the k - medium method.

Keywords: Convolutional neural networks, SVM, SVM, k-nearest neighbors, k-means, histological and cytological images

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