AI Article Synopsis

  • Continuous glucose monitoring (CGM) systems can track how food affects blood sugar levels, but current methods require manual meal logging which limits their use for personalized nutrition and diabetes risk assessment.
  • A new machine learning framework was developed to automatically analyze glucose responses to breakfast for adults with or at risk for type 2 diabetes, using data from a study with both healthy individuals and those with diabetes.
  • The machine learning model demonstrated accurate estimations of blood sugar responses, suggesting it could enhance the effectiveness and scalability of CGM applications in managing glucose levels and personalizing dietary advice.

Article Abstract

Background: Continuous glucose monitoring (CGM) systems allow detailed assessment of postprandial glucose responses (PPGR), offering new insights into food choices' impact on dysglycemia. However, current approaches to analyze PPGR using a CGM require manual meal logging, limiting the scalability of CGM-driven applications like personalized nutrition and at-home diabetes risk assessment.

Objective: We propose a machine learning (ML) framework to automatically identify and characterize breakfast-related PPGRs from CGM profiles in adults at risk of or living with noninsulin-treated type 2 diabetes (T2D).

Methods: Our PPGR estimation framework uses a random forest ML algorithm trained on 15 adults without diabetes who wore a CGM for up to four weeks. The algorithm performance was evaluated on a held-out subset of the participants' CGM data as well as on an external validation data set of 36 individuals at risk for or with noninsulin-treated T2D.

Results: Our algorithm's estimations of breakfast PPGRs displayed no statistically significant differences to annotated PPGRs, in terms of incremental area under the curve and glucose rise ( > .05 for both data sets), while a small difference in prebreakfast glucose was found in the nondiabetes data set ( = .005) but not in the validation T2D data set ( = .18).

Conclusions: We designed an ML framework to automatically estimate the timing of meal events from CGM data in individuals without diabetes and in individuals at risk or with T2D. This could provide a more scalable approach for analyzing postprandial glycemia, increasing the feasibility of CGM-based precision nutrition and diabetes risk assessment applications.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11571632PMC
http://dx.doi.org/10.1177/19322968241274800DOI Listing

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