Digital image of a blood smear as an object for research
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Keywords

Medicine, Diagnostics, Digital image, Red blood cells, White blood cells, Plasma, Blood smear

How to Cite

Boboyorov Sardor Uchqun o‘g‘li, Belova Nataliya, & Lyashenko Vyacheslav. (2023). Digital image of a blood smear as an object for research. Journal of Universal Science Research, 1(10), 517–525. Retrieved from https://universalpublishings.com/index.php/jusr/article/view/2268

Abstract

Analysis is the basis of diagnosis in medical practice. For these purposes, one important source is digital images. Based on this, we look at the digital image of the blood smear. These data allow us to consider the possibility of diagnosing various diseases. Particular attention in the work is paid to certain methods of digital image analysis. The choice of such methods is based on the analysis task. The article presents examples of digital images of a blood smear and the results of their processing.

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DOI

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