The Effectiveness of Wearable Devices Using Artificial Intelligence for Blood Glucose Level Forecasting or Prediction: Systematic Review

Mar 14, 2023Journal of medical Internet research

How well AI-powered wearable devices predict blood sugar levels: A systematic review

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Abstract

A systematic review identified 12 studies on wearable devices using machine learning for blood glucose level forecasting.

  • Diabetes mellitus affected 537 million people globally in 2021, with over 6 million deaths reported.
  • The quality assessment revealed that 92% of studies used low-risk reference standards, indicating easily replicable ground truths.
  • Half of the studies employed classical machine learning techniques, with ensemble-boosted trees being the most popular.
  • The Clarke grid error was the most common evaluation metric used in 58% of the studies.
  • Wrist-worn devices commonly utilized photoplethysmogram and near-infrared sensors for blood glucose monitoring.

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