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Over the last few decades, modern technology has been integrated into various fields, including healthcare. Digital technologies are increasingly used in the healthcare sector to automate various processes, ranging from patient registration to complex medical operations. With the development of technology, the number of various diseases is also increasing; one of the most common diseases among people is diabetes mellitus. Continuous monitoring of blood glucose levels in diabetic patients is crucial. This paper aims to review the various systems and devices used for monitoring blood glucose levels.

  • Read count 39
  • Date of publication 01-05-2024
  • Main LanguageIngliz
  • Pages7-13
English

Over the last few decades, modern technology has been integrated into various fields, including healthcare. Digital technologies are increasingly used in the healthcare sector to automate various processes, ranging from patient registration to complex medical operations. With the development of technology, the number of various diseases is also increasing; one of the most common diseases among people is diabetes mellitus. Continuous monitoring of blood glucose levels in diabetic patients is crucial. This paper aims to review the various systems and devices used for monitoring blood glucose levels.

Name of reference
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