Techniques for Diabetes Care Using Artificial Intelligence and Machine Learning: A Review

Transforming Diabetic Treatment through AI and ML

Authors

  • Mr. Ajit Patil Research Scholar, Professor, Shridhar University, Pilani, Rajasthan
  • Dr. Sushil Kumar Professor, Shridhar University, Pilani, Rajasthan

Keywords:

diabetes care, artificial intelligence, machine learning, healthcare, diabetic treatment, data availability, electronic medical records, India, world leader, unique solutions

Abstract

All aspects of our lives, including healthcare, are being reshaped by AI/ML (artificial intelligence/machine learning). Diabetic treatment might benefit greatly from the use of AI and ML, which could make it more effective and less time-consuming. In terms of data availability, the large number of diabetics in India brings a unique set of challenges, but it also gives an opportunity. With the use of electronic medical records, India may become a world leader in this field. The use of AI/ML might shed light on our issues and help us come up with solutions that are unique to each.

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Published

2021-04-01

How to Cite

[1]
“Techniques for Diabetes Care Using Artificial Intelligence and Machine Learning: A Review: Transforming Diabetic Treatment through AI and ML”, JASRAE, vol. 18, no. 3, pp. 732–737, Apr. 2021, Accessed: Jul. 03, 2024. [Online]. Available: https://ignited.in/jasrae/article/view/12555

How to Cite

[1]
“Techniques for Diabetes Care Using Artificial Intelligence and Machine Learning: A Review: Transforming Diabetic Treatment through AI and ML”, JASRAE, vol. 18, no. 3, pp. 732–737, Apr. 2021, Accessed: Jul. 03, 2024. [Online]. Available: https://ignited.in/jasrae/article/view/12555