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A technique for the processing of multidimensional data of microscopic images of endocrine cancers

Abstract

Practical technique for processing of multi-dimensional data using the example of image texture data obtained from microscopic ovarian cancer images is described.

About the Authors

M. V. Sprindzuk
Объединенный институт проблем информатики НАН Беларуси, Республика Беларусь
Belarus


L. M. Lynkou
Белорусский государственный университет информатики и радиоэлектроники, Республика Беларусь
Belarus


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Review

For citations:


Sprindzuk M.V., Lynkou L.M. A technique for the processing of multidimensional data of microscopic images of endocrine cancers. Doklady BGUIR. 2018;(5):72-76. (In Russ.)

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ISSN 1729-7648 (Print)
ISSN 2708-0382 (Online)