Published October 1, 2023 | Version v1
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Color-aware digital image segmentation procedure as a tool for studying fatty liver disease

  • 1. Tashkent Medical Academy Termiz branch, Uzbekistan
  • 2. Department of Informatics, Kharkiv National University of Radio Electronics, Ukraine
  • 3. Department of Media Systems and Technology, Kharkiv National University of Radio Electronics, Ukraine

Description

Digital medical images are one of the sources of information for timely prevention of possible diseases. In this case, color medical images are widely used. One example of such use is in the diagnosis of fatty liver disease. Based on this, the paper considers the possibility of studying fatty liver disease based on digital image segmentation taking into account color. The results of digital processing are presented for real images depicting lesions of fatty liver disease.Digital medical images are one of the sources of information for timely prevention of possible diseases. In this case, color medical images are widely used. One example of such use is in the diagnosis of fatty liver disease. Based on this, the paper considers the possibility of studying fatty liver disease based on digital image segmentation taking into account color. The results of digital processing are presented for real images depicting lesions of fatty liver disease.

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