Image Processing Techniques as a Tool for the Analysis of Liver Diseases
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Keywords

Diagnostics, Analysis, Fatty liver disease, Image processing techniques, Medical imaging, Microscopic images

How to Cite

Image Processing Techniques as a Tool for the Analysis of Liver Diseases. (2023). Journal of Universal Science Research, 1(8), 223-233. https://universalpublishings.com/~niverta1/index.php/jusr/article/view/1768

Abstract

Identification of diseases and their successful treatment is largely determined by early diagnosis. This allows you to both prevent the development of the disease and get rid of possible negative consequences. Various data can be used for these purposes. We are looking at medical imaging techniques. Microscopic images of the liver, where manifestations of fatty disease are possible, were chosen as the object of study. The paper summarizes the general scheme of the corresponding analysis, and presents the results on real images.

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References

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