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Proactive Identification of Patients with Diabetes at Risk of Uncontrolled Outcomes during a Diabetes Management Program: Conceptualization and Development Study Using Machine Learning.

Arash KhalilnejadRuo-Ting SunTejaswi KompalaStefanie Lynn PainterRoberta A JamesYajuan Wang
Published in: JMIR formative research (2024)
This study explored the Livongo for Diabetes RDMP participants' temporal and static attributes, identification of diabetes management patterns and characteristics, and their relationship to predict diabetes management outcomes. Proactive targeting ML models accurately identified participants at risk of uncontrolled diabetes with a high level of precision that was generalizable through future years within the RDMP. The ability to identify participants who are at risk at various time points throughout the program journey allows for personalized interventions to improve outcomes. This approach offers significant advancements in the feasibility of large-scale implementation in remote monitoring programs and can help prevent uncontrolled glycemic levels and diabetes-related complications. Future research should include the impact of significant changes that can affect a participant's diabetes management.
Keyphrases
  • type diabetes
  • glycemic control
  • cardiovascular disease
  • quality improvement
  • healthcare
  • primary care
  • public health
  • weight loss
  • current status
  • drug delivery
  • cancer therapy